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SOLICITED NASA PROPOSAL APPLICATION SOLICITED NASA PROPOSAL APPLICATION LEAVE BLANKLEAVE BLANK IN RESPONSE TO ANNOUNCEMENT NRA2-38169 NUMBER REVIEW GROUP DATE RECEIVED PLEASE FOLLOW INSTRUCTIONS CAREFULLY 1a. COMPLETE TITLE OF PROJECT: 1b. PROPOSAL TOPIC: 2. PRINCIPAL INVESTIGATOR/PROGRAM DIRECTOR (First, middle, and last name; degrees; position) 3. COMPLETE MAILING ADDRESS Congressional District: 4. TELEPHONE NUMBER (area code, number, extension) FAX NUMBER: 5. TAXPAYER IDENTIFICATION NO. (TIN) 6. NAIS CODE CAGE CODE E-MAIL ADDRESS: 7. HAS THIS PROPOSAL (OR SIMILAR REQUEST) BEEN SUBMITTED TO ANY OTHER AGENCY? No Yes IF YES, SPECIFY AGENCY AND YEAR SUBMITTED: 8. WILL HUMAN SUBJECTS BE USED IN THE PROPOSED RESEARCH: 9. CO-INVESTIGATORS (First, middle, and last name; degrees) No Yes 10. CO-INVESTIGATOR'S ORGANIZATION 11. OTHER PARTICIPATING ORGANIZATIONS (e.g., NASA Field Centers or Other Institutions): 12. DATES OF ENTIRE PROPOSED PROJECT PERIOD From: Through: 13. 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Willful provision of false information is a criminal offense (U.S. Code, Title 18, Section 1001). 22. CERTIFICATION AND ACCEPTANCE: By submitting the proposal identified in this Cover Sheet/Proposal Summary in response to NRA2-38169, the Authorizing Official of the proposing institution (or the individual proposer if there is no proposing institution): 1) certifies that the statements made in this proposal are true and complete to the best of his/her knowledge; 2) agrees to accept the obligations to comply with the sponsoring agency award terms and conditions if an award is made as a result of this proposal; and 3) if the applicant organization is an entity of the United States of America, confirms compliance with all provisions, rules, and stipulations set forth in the three Certifications contained in this NRA (namely, i) Certification Regarding Debarment, Suspension, and Other Responsibility Matters -- Primary Covered Transactions, ii) Certification Regarding Lobbying, and iii) Certification of Compliance with the National Aeronautics and Space Administration Regulations Pursuant to Nondiscrimination in Federally Assisted Programs). Willful provision of false information in this proposal and/or its supporting documents, or in reports required under an ensuing award, is a criminal offense (U.S. Code, Title 18, Section 1001). SIGNATURE OF PERSON NAMED IN BLOCK 2 (In ink; "Per" signature not acceptable.) ________________________________________________ Date:_____________ SIGNATURE OF PERSON NAMED IN BLOCK 20 (or person named in 2, if there is no proposing institution) (In ink; "Per" signature not acceptable.) __________________________________________________________ Date:_______________________________________ [Autonomous Recognition and Discovery …] Contents Cover Page ................................................................................................................. i Table of Contents ...................................................................................................... ii Abstract ...................................................................................................................... 1 1 NASA Relevance .................................................................................................... 2 1.1 Mission Impact.......................................................................................... 2 1.2 Technology Transition Plan ...................................................................... 3 2 Technical Plan ........................................................................................................ 4 2.1 Objectives ................................................................................................. 4 2.2 Scientific Relevance.................................................................................. 4 2.3 Technical Approach .................................................................................. 5 2.3.1 Overview .................................................................................... 2.3.2 Related Work ............................................................................. 2.4 Expected Results ....................................................................................... 13 2.5 Evaluation Methodology ........................................................................... 13 2.6 Synergy with Other Activities ................................................................... 13 2.7 Facilities and Equipment........................................................................... 14 2.8 References ................................................................................................. 15 3 Management Plan .................................................................................................. 16 3.1 Personnel Commitments .......................................................................... 16 3.2 Contribution by the PI and each Co-I ....................................................... 16 4 Cost Plan ................................................................................................................. 18 4.1 Budget Summary ...................................................................................... 18 4.1.1 Year 1 ......................................................................................... 4.1.2 Year 2 ......................................................................................... 4.1.3 Year 3 ......................................................................................... 4.1.4 Total Budget............................................................................... 4.1.5 Budget Details ............................................................................ 4.2 Current and Pending Support ................................................................... 25 5 Qualifications ......................................................................................................... 31 iii Mining Knowledge from Spatial Data ABSTRACT We propose to develop new techniques for mining knowledge from spatial and spatio-temporal what is “spatio-temporal”? datasets. The physical processes that govern the formation/evolution of landforms on a planetary surface often have localized spatial and temporal support, which leads to significant correlations and inter-relations between nearby objects. Proper interpretation of the observations can be achieved only by taking into account the context. For geologic landforms, this means understanding and reasoning about the surroundings and the relationship of the feature to nearby geologic units. Although some functionality for accessing and visualizing spatial data is currently available in Geographic Information Systems (GIS) and Spatial Databases, the capabilities targeted in this proposal go much deeper with the aim of enabling scientists and engineers to efficiently harvest knowledge from large spatial datasets. As a testbed for initial development, we will focus on mining knowledge from the cratering record on planetary, satellite, and asteroidal surfaces. Craters are a particularly worthy prototype landform to study because they are ubiquitous throughout the solar system and they form with a welldefined and known initial shape. Subsequent geological processes alter a crater’s morphology so that understanding the spatial distribution of crater morphologies allows significant conclusions to be made about the processes that have acted on a surface. The techniques developed in this pilot study are expected to be broad-ranging and applicable to a variety of spatial data mining problems including study of other landforms and monitoring of distributed sensor networks. Teaming technologists with practicing scientists will insure that this research is both innovative and relevant. In previous joint work, our team has made significant advances in automated analysis of imagery collected by spacecraft (e.g., development of adaptive recognizers for shield volcanoes [6] and impact craters [7,11,12,14], an autonomous satellite search capability [8,13], and the core perception algorithms in the New Millennium Program’s ST6 Autonomous Sciencecraft Experiment [15]). 1 NASA Relevance 1.1 Mission Impact Due to limited science analysis funds and the time-consuming nature of analysis of craters and other geomorphic features in planetary spacecraft imaging, only a very tiny fraction of important images have been analyzed from past and ongoing missions. NASA’s Planetary Data System houses an enormous library of images from past missions to the Moon, Mars, asteroids, and outer planet satellites awaiting analysis. Development of state-of-the-art tools for automated detection and characterization of craters and other geomorphic features, which could operate either independently or as an assistant to a human analyst, will vastly extend the science analysis yield from past and ongoing missions. Among the important imaging datasets of solid surfaces that could be exploited in this way (for “NASA Science Measurements” are Clementine, Galileo, and Mars Global Surveyor. In addition, imaging data showing craters, rocks, and other features that have been recently collected by ongoing missions range from the stunning visible and infrared imaging data from the THEMIS instrument on Mars Global Surveyor to the much smaller but unique images of the nucleus of Comet Wild 2 obtained in January 2004 by the Stardust spacecraft. Two other ongoing missions, already launched, have begun to collect (or soon will) additional imaging datasets: Cassini has both narrow- and wide-angle cameras that will image the moons of Saturn. And the successfully deployed Mars Express Orbiter has a high-resolution camera that will image the entire globe of Mars to 10 m resolution and selected areas to 2 m. Other NASA and ESA missions currently in development have ambitious imaging plans and will produce datasets – rich with geomorphic features – that will dwarf those already obtained. These include the Deep Impact mission to a comet (with high- and medium-resolution instruments); the Mars Reconnaissance Orbiter, to be launched in 2005, with several imaging instruments including the amazing HiRISE instrument capable of resolving 30-60 cm pixels on the Martian surface; the MESSENGER orbiter mission to heavily cratered Mercury; the New Horizons mission to Pluto, the Rosetta mission to a comet (with its Osirus imager); and the DAWN mission to large mainbelt asteroids. Farther in the future, there are preliminary plans for planetary missions with orbital imaging systems, including the Jupiter Icy Moons Orbiter, Mars orbiters in the timeframe beyond 2009, the Phoenix Mars lander with its MARDI descent imager, comet and lunar sample returns, and a Europa geophysical explorer. Still other missions, mainly to Mars, propose extensive landed imaging experiments that may be assisted – either in design or in subsequent data analysis – by the techniques we propose to develop. It must be remembered that impact craters on the surfaces of solar system bodies are ubiquitous and fundamental to planetary science. Since impact craters are the basis for some of the most fundamental analyses in planetary geology (including determination of stratigraphic age relations), there will always be a need to analyze primary crater populations in images from future missions. Beyond primary impact craters, numerous other kinds of geological features exist in great abundance and their spatial distributions hold important clues to the fundamental processes that shape planetary surfaces. These include large scale tectonic features (e.g. faults and graben), depositional features (e.g. flows, mass wasting deposits, dunes, lake beds), constructional features (e.g. volcanic domes), secondary impact features (e.g. secondary craters and rays), and erosional features (e.g. gullies and channels). At high resolutions, many planetary 1 surfaces (e.g. Eros, Mars) are seen to have innumerable rocks and boulders. Past (and, of course, future) imaging data sets are replete with never-analyzed data concerning all of these kinds of features. Thus a reliable, automated approach to unbiased recognition and classification of such features, in order to determine their global distributions, would be an invaluable asset to planetary researchers of the future. 1.2 Technology Transition Plan By teaming computer scientists with domain experts having significant mission experience, we expect to produce solutions that cut directly to the critical issues and provide scientifically meaningful results. Our team has an excellent track record for bringing information technology research to higher technology readiness levels (TRLs) and into actual deployment. Two highprofile examples include: (i) an autonomous satellite-search capability that we developed under NASA CETDP funding, which was used to aid in the search for satellites of Eros in approach mosaics that were down-linked from NEAR as it entered orbit around asteroid Eros [?] and (ii) the core perception algorithms in the New Millennium Program’s ST6 Autonomous ScienceCraft Experiment [?]. From an institutional standpoint, CU Boulder, JPL, and SwRI are all heavily involved in actual spacecraft missions and in the analysis of data from those missions. This culture provides both a large body of expertise, as well as a path of lower resistance for migrating successful new technology into deployment. Once the feasibility of automatically mining knowledge from spatial data has been established in the IS research program, we will pursue follow-on funding from higher TRL programs in order to make the algorithms broadly available to the scientific community (“tool building”). The recently restored Applied Information Systems (AIS) program, under which several of our team members previously led projects, is a good potential program to pick up this activity. 2 2 TECHNICAL PLAN 2.1 Objectives The goal of our proposed work is to develop automated techniques to assist in the laborious task of intpreting spatial data. Our primary focus will be on craters since they are a ubiquitous landform whose spatial distribution conveys valuable scientific information. The techniques developed in this pilot study will be readily applicable to other landforms --- water and wind erosional or depositional features (e.g., river valleys or sand dunes), tectonic features (e.g., faults, graben), and volcanic features (e.g. flow boundaries, rilles, collapse features) and potentially to distributed senso networks . 2.2 Scientific Relevance Close interaction between computer scientists and planetary scientists will help insure that the research conducted is both innovative and beneficial to the scientific community. The Southwest Research Institute (SwRI) team will provide scientific guidance to the project based on their expertise in the analysis of planetary features. The ever-growing volume of image data being returned by NASA spacecraft makes necessary the development of new, automated techniques for data visualization, reduction, and analysis. The need is not only to keep up with the data volume, but also to allow maximal extraction of useful information from the data, acquired at high cost to the public and to competing science programs. There are many useful data sets now sitting in archives that have not been (or cannot be, due to lack of automated assistance techniques) fully or even partially analyzed and interpreted with regard to the geologic understanding. And yet, even now, image data from Mars Odyssey and Mars Global Surveyor continues to pour in. Future NASA missions, like Mars Reconnaissance Orbiter (expected to return more than 35 Terabytes of data), will not realize their full scientific potential if we do not develop intelligent methods for data understanding. Craters are a particularly worthy landform for prototyping spatial data mining techniques. Craters are ubiquitous, forming randomly over all parts of exposed surfaces in the solar system. Even Europa, which has the reputation of being nearly devoid of craters, in fact has many --- for his PhD thesis, which we directed, Beau Bierhaus, detected and measured 25,000+ craters over the small fraction of Europa's surface [1] that was imaged by the Galileo spacecraft. Craters form with a well-defined initial shape in an explosion process in which the main relevant variable is the energy of the impactor. Changes from the initial shape over millions of years help scientists understand the processes that have acted on the body. Adjacent geological features that may affect interpretations of crater morphologies include sand dunes (affecting a crater’s morphology by sand deposition), local evidence of sapping (collapse due to removal, e.g., by melting of subsurface ice, possibly causing pits that could be misinterpreted as craters if the image resolution is insufficient), clusters of small craters near a large crater (suggesting they are secondary craters formed from the ejecta of the large impactor), the nearby presence of river valleys or channels (increasing the likelihood that water erosion has acted on the crater), or the spatial relationship to tectonic features that may shift or alter the crater morphology. Studies of 3 the nature of endogenic processes on planetary surfaces (e.g., volcanic flooding, filling by dust, tectonic processes) that degrade topography, such as the controversial process(es) that erased most of the craters on Venus that are older than 500 million years, can be made from statistics of craters of different morphological classes. Knowledge of planetary stratigraphy and the interplanetary correlation of geologic time, can also be gained from these cratering studies. Some of the major insights, as well as major continuing controversies concerning planetary evolution have been based on cratering studies. The central problem in understanding the nature of our sister planet, Venus --- whether or not it is subjected to catastrophic resurfacing --- was first recognized from cratering studies. There continues to be disagreement over the ages of some of the surfaces of the Galilean satellites (largest 4 moons of Jupiter). In particular, estimated ages for the surface of Europa have ranged from a mere several million years to several hundred million years, a significant fraction of the entire time span of the solar system. While the controversy is not likely to be solved solely by more efficient and reliable crater morphological measurement and analysis of spatial interrelations with other landforms, age estimates will depend heavily on these aspects of the data. The implications of these ages can be profound. If the age of Europa's surface is only a few tens of millions of years old, then it can be considered currently active. Whether the surface is active or inactive has a bearing on whether there is likely to be a liquid-water ocean beneath the crust and hence whether there is a potential for life. This has further implications for the proposed NASA mission to Jupiter's moons, the JIMO mission (Jupiter Icy Moons Orbiter), and the potential experiments and instrument design. The spatial context of surrounding terrains and the morphological variations of craters on a regional or global scale help shape our understanding of the data and the geology. Taken out of context, the image of a single crater (or any other geologic feature) by itself has limited scientific value. In short, geologic data simply must be interpreted in the context of its surroundings and its relationship to other geologic units. To date, most geologic interpretation of spatial processes has involved human-intensive scrutiny of whatever set of images could be analyzed in the available time. New images, taken at higher resolution and numbering in the hundreds of thousands now make this a daunting, if not impossible, task without machine assistance. The goal of our proposed work is to develop automated techniques to assist in this laborious task and potentially call the scientist’s attention to trends or relationships that are not immediately evident. A scientist, who can bring years of experience and conceptual understanding to bear on interpreting the data, must still do the final detailed geologic interpretation. While our focus in this study will be on craters as a prototype landform, the process of detecting features, measuring morphology, and making spatial associations can be (and necessarily will be in some cases) extended to other landforms --- water and wind erosional or depositional features (e.g., river valleys or sand dunes), tectonic features (e.g., faults, graben), and volcanic features (e.g. flow boundaries, rilles, collapse features). In fact, many of these features will have to be recognized and interpreted automatically to aid the scientist. 2.3 Technical Approach Spatial datasets consist of a set of spatial locations and associated measurements (attributes). (In 4 the case of spatio-temporal data, the “location” component also includes a time index, but in this proposal we will focus exclusively on spatial data.). Image data can be viewed as a specialized type of spatial data in which the pixel coordinates provide the location component. The attributes in a spatial dataset may be very low-level (e.g., the brightness value of a pixel, measurements of temperature and pressure) or high-level (e.g., the name of an object and a list of its properties). There are a number of interesting spatial data mining problems and applications; for surveys and background information please refer to [5,6]. As a spatial data mining problem, the study of crater morphology from image data is especially challenging, but, as outlined above in the science section, it is potentially a very rewarding task to automate. The basic steps involved include: (1) detecting and sizing the craters, (2) making detailed measurements of the crater morphology, (3) examining spatial properties of crater morphology, and (4) studying the relationships between craters and other features. 2.3.1 Detecting and Sizing Craters in a Region of Interest: We have already developed algorithms that can automatically detect and measure sizes of craters in image data using a combination of techniques including continuously scalable template models, Hough transforms, and specialized annular kernels [2,8]. By combining the detections of these various methods with high confidence thresholds required for each, we are able to detect and accurately size the majority of real craters in moderately complex landscapes, while minimizing false detections. At a minimum, this provides an intelligent assistant, which will allow a human labeler to quickly edit any mistakes made by the algorithms. Also, since in this proposal we are mainly interested in the spatial variations in morphology rather than in crater detection per se, we may be able to utilize the human-generated catalogs of crater locations that exist for some surfaces,such as the Bierhaus survey of Europa and the Nadine Barlow catalog of large Martian craters. Such catalogs would enable one to skip ahead to making the detailed measurements of crater morphology at each cataloged location. 2.3.2 Detailed Measurements of Crater Morphology Once the craters have been accurately located, the next step is to perform detailed measurements of their morphology. We must go further than mere categorization and classify the craters according to the effects of specific physical processes that may be affecting them. For example, we need to know whether the crater walls are slumped, the walls breached, the crater floor infilled by lava, or there are sand dunes (indicating the crater is in a region of material deposition by wind). Possibly the walls are falling apart in place (disintegrating), such as occurs with craters on Jupiter's moon Callisto. Here, the crater walls, formed from a combination of ice and rock initially, disintegrate with time as the ice sublimes away on this cold, airless world. Do we have any examples of these morphology features that could be put into a figure so reviewer could hopefully see that measuring such features automatically is plausible?. To measure the crater morphology and assess processes that may be acting on the craters, we will pursue a multi-pronged approach. For quickly obtaining short-term results, we will try to directly incorporate as much of the scientist’s background knowledge into the measurement process as possible by developing specific feature detectors/measurement functions to assess quantities that 5 are known to be of interest, e.g., the rim height, the depth of the floor, the presence of a central peak, or the integrity of the rim. For the mid-term, we will investigate techniques by which the desired mappings from pixel values to attributes can be learned with feedback from the scientist. Note that mappings to both continuous-valued attributes (rim height) and discrete-valued attributes (central peak present) are needed. The scientist will manually measure or judge the various attribute values on a number of craters to provide training data to the learning algorithm. Classification and function approximation (regression) methods such as feed-forward neural networks will be used to map from the raw pixel-value image patches containing the feature to the desired attribute value. For the longer term, we will look at active learning methods and incorporating advice or hints from the scientist into the learning process to make the most of the scientist’s time. Active learning methods will ask the scientist to label additional crater examples that are likely to be most helpful in pinning down the proper mapping. Features that are more complex such as edges and filter outputs will also be considered as inputs to the learning process. I’m not sure how this next line was intended to work. Maybe Becky has some idea. Relevance feedback methods to determine the most useful input features (or weightings over input features) may enable quick discovery of the desired mapping. 2.3.3 Examining Spatial Properties of the Morphology of Craters and Other Features An interesting problem here is to use unsupervised clustering of morphological attributes to determine equivalence classes (“types of craters”) and then create summary statistics that capture the spatial distribution of different morphologies, e.g., size-frequency distributions, aggregated over various scale regions. We will also investigate whether there are spatial trends in various morphological attributes (e.g., we may quantify the way morphology changes with latitude or altitude, spatial parameters with which aeolian modification processes vary). Many geologic features are distributed very non-randomly on planetary surfaces. Analysis of their spatial distributions often yields vital insights about processes. For example, the non-random distribution of boulders on Eros points to their origin in the impact that formed Shoemaker crater Another issue will be to determine if there are statistically significant differences between the populations of craters in two different regions of the surface. Initially, we may use stratigraphic units as previously defined through traditional geologic mapping; later, we will explore the possibility for actually defining the boundaries of geologic units from analysis of the relative constancy of statistical properties of morphologic parameters. We will also be able to look for localized subpopulations of craters and craters that differ significantly from their neighbors (spatial clusters/spatial outliers). [To the degree I understand the above section, I think it is not in good accord with principles of planetary geology. Different crater morphologies are likely to vary much more with size than with any spatial variable. Thus, to study spatial variability of morphology, one must first take into account the variability with size. I would address such issues by forming size-frequency distributions of different morphological classes (what you call “types of craters,” I guess) and studying how those distributions change at different locations on the planetary surface. Size-frequency distributions are not “morphologies”, so I don’t understand 6 that usage. In general, geologic processes do not vary over large spatial scales, so a generalized decrease in craters as sand dunes are approached is not plausible. Instead, geologists habitually define sharp-boundaried “units” (presumably of the same “age” and within which the same processes affected the landscape), within which statistical properties of geomorphological variables tend to be pretty constant. Therefore, a more useful approach to this topic (“examining spatial properties of crater morphology”) might be an automated determination of unit boundaries, having the above rather constant properties.] 2.3.4 Studying the Relationship Between Craters and Other Features This process will explore the relationship between craters and other geologic processes. In effect, we will try to determine co-occurrence and anti-co-occurrence relationships. Hypotheses will come from the scientist and the algorithm will search for evidence to support or refute the hypothesis. For example, the algorithm might note that there is an unusual size-frequency distribution in region X. The scientist could then postulate that this is caused by volcanic activity in the area. The algorithm could then collect information to present to the scientist to support or reject this hypothesis. In its most general form, this type of activity would require detectors for other types of features, e.g., volcanic vents. [So do we propose to develop such detectors for other types of features? That would be very ambitious and the funding probably isn’t in our budget to do that. If we can’t do that, is there an alternative way to pose Activity 4?] . Secondary craters bear spatial relationships to the primary craters from which the secondarycrater-forming ejecta came. The unexpected poleward-facing preference for Martian gullies inspired much theoretical analysis to understand how features apparently formed by water (requiring warmth) seemed to prefer colder locations; later analyses have questioned whether these features really do prefer the colder places, which is an example of why an unbiased, more efficient, automated gully detector analyzed in terms of localized slopes having various directions might have focused scientists’ attention on the correct facts. If guess the answer to this depends on what type and how many other types of features might be of interest. Some things like “linear features” I expect would not be so hard to detect at some level of reliability. Certain kinds of textured regions might not be so hard. If we’re talking about more semantic-level objects that have names, say relationship between craters and dunes, then we’re starting to get into a lot more work to do automatically. 2.3.5 Perceptual Grouping for Object Segmentation and Subsequent Spatial Data Mining: Making spatial associations directly from image data without first passing to object labels could greatly simplify the process of exploring co-occurrences and broaden the applicability of the methods. A bottom-up grouping process may enable relevant objects to be segmented from the background. For example, in an image with many craters, connected regions of pixels with similar brightness values might be grouped into higher-level tokens. The consistent (or common) organization of these tokens in adjacency relationships with related sizes provides a statistical regularity that could be recognized and used to group parts into a larger token. Similarly, a connected linear feature consisting of bright features (e.g., from a rille) might be grouped into a single object. This process potentially gives a varied set of objects without having to explicitly build a detector for each one. The spatial data mining algorithms could then explore possible cooccurrence or other spatial relations between these objects. For example, on Earth one might 7 find a relationship between unhealthy trees and roads by observing that dark spots (dead trees) occur more frequently in green textured areas near black linear features (highways) than in green textures areas that do not have nearby black linear features. [I don’t really understand this paragraph. I understand the dead-tree/highway example, but what would be a plausible planetary example? What, exactly, are we proposing to DO here?] I am not sure about planetary example. Would investigating the relationship between craters and the linear features on Europa be something of interest? Would a dearth of craters in close proximity to the linear features be an interesting discovery? Would a dearth of craters in close proximity to particular linear features suggest that those might have been more recent fractures? I guess what I was trying to get at was way to explore spatial relationships between “objects” without having to determine a semantic label for the object, i.e., without having to build a detector for all types of objects or a classifier. Instead I am suggesting that we could label patches of the image with some sort of cluster label (e.g., if we applied the kmeans clustering algorithm to all 8x8 pixel blocks and then assigned each block the id number from the closest cluster center (in terms of similarity now not spatial distance), then we could investigate things like spatial association rules, which might say that the probability a tile of type 64 is to the right of a tile of type 36 is quite high. Going beyond tiles or blocks, I was suggesting a spatial grouping process to link nearby structures together into bigger units and these structures could be given some sort of label based on the building blocks in the structure and their arrangement. 2.4 Evaluation Methodology How will we objectively measure whether the algorithms are doing something useful or whether one algorithm is better than another? 2.5 Expected Significance This proposal directly addresses the IS/IDU goal of ``future capabilities that streamline investigations by automating tasks that are best performed by machines while freeing scientists and engineers to focus on the creative process of hypothesis generation and knowledge synthesis. Geologic interpretation and understanding of image data is largely one of interpreting the spatial correlations and interrelations of the various types of landforms. Our work here will develop the techniques necessary for scientists to make effective use of the large existing and forthcoming spatial data sets. In the process, the scientist is freed to perform the highest-level task of data understanding and interpretation for which he/she is better suited, while the machine can perform the data organization, correlations, trend recognition, and first-order synthesis. 2.6 Facilities and Equipment Need to update this. CU Boulder: The University of Colorado Intelligent Systems Group has several modern Linux workstations, each with a fast CPU (Pentium 4 at 2.5Ghz or better), ample RAM (1-2 GB) and 8 disk space (>100GB), and 100Mbps Ethernet connection. Additionally, we have requested funds for FY04 for 10 1U slave nodes (dual CPU with 2GB of fast RAM and fast disks) to include in a rack mount compute server. The PI will provide the rack, head node, and network switch from separate funds. The slave nodes are needed to enable rapid experimentation and evaluation of the algorithms over sufficiently large datasets. JPL: The JPL Machine Learning Systems Group currently has at its disposal approximately 15 dual CPU, SUN Ultra60 workstations with 1-2GB RAM each, disk space on the order of 0.2TB, as well as a number of recently purchased Pentium-based PCs. Standard software development tools (compilers, debuggers, etc.), database products (ObjectStore, PostgreSQL), 100Mbps network connections, and prototyping/data visualization software (e.g., Matlab) are readily available. In addition, the group has two Beowulf-style clusters. One cluster has 64 Pentium III processors at 933 MHz with 0.5GB RAM per processor, 0.65TB total disk space, and UPS power to ensure continuous operation. A second cluster has 32 Pentium III Processors at 1.6GHz with 1GB RAM per processor, ? total disk space, and UPS power. These systems will enable rapid testing of algorithms at a variety of parameter settings and over large image collections. As an illustration, with this new system, the JARtool algorithm developed in earlier work for finding small volcanoes in the Magellan imagery of Venus could process the entire 30,000 image Magellan collection in a single day, as compared with several months for a single processor system. The entire processing power of this cluster is under the direct control of the Machine Learning Systems Group, i.e., it is a dedicated resource, not time-shared across groups. SwRI: The offices of SwRI are well equipped with workspace, computer resources, a T1 NSI connection, and administrative and computer support to meet the goals of the program. We will have, for our immediate use, two SUN Ultra2 workstations, 3 SUN Ultra1 workstations, a Dell 7500 Inspiron laptop, a pair of 933MHz Linux PCs dedicated to running algorithm tests, and 100 GB of hard-disk storage. New equipment, should it be needed, can be acquired through an internal capital equipment fund. 2.7 Selected Technical References [1] Bierhaus, E.B., Merline, W.J., Chapman, C.R., Burl, M.C. "Characterization of Secondary Craters Using Machine Vision", Proc. 6th International Symposium on Artificial Intelligence, Robotics, and Automation in Space, 2001 (Montreal), CD-ROM, paper AM114 (2001). [2] Burl, M.C., Stough, T., Colwell, W., Bierhaus, E.B., Merline, W.J., Chapman, C.R. "Automated Detection of Craters and Other Geological Features", Proc. 6th International Symposium on Artificial Intelligence, Robotics, and Automation in Space, 2001 (Montreal), CDROM, paper AM118 (2001). [3] M.C. Burl, ``Mining Large Image Collections'' , Chapter in Data Mining for Scientific and Engineering Applications, Eds. R. Grossman, C. Kamath, V. Kumar, and R. Namburu, Kluwer, (2001). [4] M.C. Burl, L. Asker, P. Smyth, U. Fayyad, P. Perona, J. Aubele, and L. Crumpler, ``Learning to Recognize Volcanoes on Venus'', Machine Learning, (April 1998). [5] K. Koperski,J. Adhikary, J. Han, ``Spatial Data Mining: Progress and Challenges Survey 9 Paper'', In Proc. ACM SIGMOD Workshop on Research Issues on Data Mining and Knowledge Discovery, Montreal, Canada, (1996). [6] S. Shekhar and S. Chawla, Spatial Databases: A Tour, Chapter 7, Prentice Hall, (2003). [7] X. Song, Y. Abu-Mostafa, J. Sill, H. Kasdan, ``Incorporating Contextual Information into White Blood Cell Image Recognition'', Advances in Nueral Information Processing Systems, MIT Press, (1997). [8] Magee, M., Chapman, C.R., Dellenback, S.W., Enke, B., Merline, W.J., Rigney, M.P. “Automated Identification of Martian Craters using Image Processing”, Proc. Lunar & Planetary Science Conf. XXXIV, 1756 (2003). [9] S. Chien, R. Sherwood, M. Burl, R. Knight, G. Rabideau, B. Engelhardt, A. Davies, P. Zetocha, R. Wainright, P. Klupar, P. Cappelaere, D. Surka, B. Williams, R. Greeley, V. Baker, J. Doan, "The Techsat-21 Autonomous Sciencecraft Constellation Demonstration", Proc. of iSAIRAS 2001, Montreal, Canada, June 2001. [10] R. Castano, T. Mann, E. Mjolsness, “Texture Analysis for Mars Rover Images”, in Applications of Digital Image Processing XXII, Proc. of SPIE Vol. 3808, Denver, CO, pp. 162173, (July 1999). [11] E. Mjolsness and D. DeCoste, “Machine Learning for Science: State of the Art and Future Prospects”, Science 293, pp. 2051-2055, 14 (Sept 2001). 10 3 MANAGEMENT PLAN 3.1 Personnel Commitments FY04 0.16 0.05 0.10 0.05 Prof. Michael Burl, CU Boulder (PI) Dr. William Merline, SwRI (Co-I) Dr. Clark Chapman, SwRI (Co-I) Dr. Rebecca Castano, JPL (Co-I) FY05 0.16 0.05 0.10 0.05 FY06 0.16 0.05 0.10 0.05 The time commitment by the PI includes one full summer month and one additional month during the academic year that is not charged to the project. In addition to the time commitments by the above named investigators, the work plan includes: Two full-time University of Colorado graduate students. One Research Analyst at SwRI at average FTE level 0.25 per year. Programming support at JPL at average FTE level 0.5 per year. 3.2 Contribution by the PI and each Co-I Prof. Burl is the PI and will manage all aspects of the project including technical direction, budgets, and schedules, including timely completion of milestones. He will directly oversee the quality of deliverables and other technical output (e.g., reports, presentations). Prof. Burl has long-standing research ties with both the JPL Machine Learning Group and with the SwRI science team. He will work closely with both groups to insure a concerted effort toward the project objectives. In addition, he will coordinate the activities of two graduate students, who will conduct research relevant to the project as part of a program leading to a doctoral degree. SwRI: FIX! The SwRI team brings an impressive body of expertise in planetary science to the project, including substantial mission experience. The SwRI team will (1) provide scientific guidance to the project, (2) establish scientifically meaningful performance objectives, (3) evaluate ground-based or other proof-of-concept prototypes on relevant datasets to measure progress against objectives, (4) provide timely feedback to the PI to facilitate continued algorithmic improvements. Specific roles are aligned with the expertise of the individual scientists. Dr. Merline will lead and coordinate the SwRI team’s efforts to guide the development and testing, including oversight of SwRI support personnel (Research Analyst). Dr. Chapman will serve as the primary adviser for applications involving geological feature detection, classification, and cataloging. JPL: The JPL team has significant expertise in computer vision and machine learning techniques particularly as related to clustering. Dr. Castano will serve as the primary interface between the PI and the JPL team. The JPL team will focus on measurement of morphological features of craters from image data. 11 12 4 COST PLAN 4.1 Budget Summary Year 1 (03/01/04 - 09/30/04) PROPOSAL TITLE: Knowledge Discovery from Spatial Data, NRA2-38169 PROGRAM: Research in Intelligent Systems ($K) | A B 1 Direct Labor (salaries, wages, and fringe benefits) $ 2 Other Direct Costs: a. Subcontracts $ b. Services $ c. Equipment $ d. Supplies $ e. Travel $ f. Other (MPS & ADC) $ 3 Facilities and Administrative Costs $ 4 Other Applicable Costs: (Award Fee) $ 5 $ SUBTOTAL—Estimated Costs NASA USE ONLY C 6 Less Proposed Cost Sharing (if any) 7 Total Estimated Costs $ XXXXXXX 8 Other NASA Center Costs 9 APPROVED BUDGET $ 13 XXXXXXX | Year 2 (10/01/04 - 09/30/05) PROPOSAL TITLE: Knowledge Discovery from Spatial Data, NRA2-38169 PROGRAM: Research in Intelligent Systems ($K) | A B 1 Direct Labor (salaries, wages, and fringe benefits) $ 2 Other Direct Costs: a. Subcontracts $ b. Services $ c. Equipment $ d. Supplies $ e. Travel $ f. Other (MPS & ADC) $ 3 Facilities and Administrative Costs $ 4 Other Applicable Costs: (Award Fee) $ 5 $ SUBTOTAL--Estimated Costs NASA USE ONLY C 6 Less Proposed Cost Sharing (if any) 7 Total Estimated Costs $ XXXXXXX 8 Other NASA Center Costs 9 APPROVED BUDGET $ 14 XXXXXXX | Year 3 (10/01/05 – 09/30/06) PROPOSAL TITLE: Knowledge Discovery from Spatial Data, NRA2-38169 PROGRAM: Research in Intelligent Systems ($K) | A B 1 Direct Labor (salaries, wages, and fringe benefits) $ 2 Other Direct Costs: a. Subcontracts $ b. Services $ c. Equipment $ d. Supplies $ e. Travel $ f. Other (MPS & ADC) $ 3 Facilities and Administrative Costs $ 4 Other Applicable Costs: (Award Fee) $ 5 $ SUBTOTAL--Estimated Costs NASA USE ONLY C 6 Less Proposed Cost Sharing (if any) 7 Total Estimated Costs $ XXXXXXX 8 Other NASA Center Costs 9 APPROVED BUDGET $ 15 XXXXXXX | Total Budget (03/01/03 – 09/30/06) PROPOSAL TITLE: Knowledge Discovery from Spatial Data, NRA2-38169 PROGRAM: Research in Intelligent Systems | A B 1 Direct Labor (salaries, wages, and fringe benefits) $ 2 Other Direct Costs: a. Subcontracts $ b. Services $ c. Equipment $ d. Supplies $ e. Travel $ f. Other (MPS & ADC) $ 3 Facilities and Administrative Costs $ 4 Other Applicable Costs: (Award Fee) $ 5 $ SUBTOTAL--Estimated Costs 6 Less Proposed Cost Sharing (if any) $ 7 Total Estimated Costs $ 8 Other NASA Center Costs $ 9 APPROVED BUDGET $ 16 NASA USE ONLY C XXXXXXX XXXXXXX | 4.2 Current and Pending Support (PI) Project Sponsor C/P Budget ($K) PERIOD Time FTE Visual Recognition and Discovery for Onboard Science Analysis and Data Exploration (this proposal) NASA, IS (J. Coughlan) P 500 03/04-09/06 0.16 Multi-Objective Simulation-driven Discovery NASA, IS (J. Coughlan) P 200 03/04-09/06 0.08 Mining Knowledge from Spatial Data NASA, IS (J. Coughlan) P 500 03/04-09/06 0.16 Visual Tracking of Multiple People LLNL (C. Kamath) P 60 05/03-10/03 0.08 17 5 QUALIFICATIONS: Dr. Michael C. Burl (PI) Department of Computer Science University of Colorado, Boulder Boulder, CO 80309 http://www.cs.colorado.edu/~mburl/ Phone: (303) 492-2913 Fax: (303) 492-2844 [email protected] Research Interests Computer vision, machine learning, data mining, and robotics. Specific areas include: Detection and recognition of objects in images and other data sources Smart sensors and systems for autonomous exploration and data gathering Video surveillance and tracking Mining scientific and engineering datasets Education Ph.D. M.S. B.S. Electrical Engineering, Caltech, 1997 (Advisor: Pietro Perona) Electrical Engineering, Caltech, 1992 Electrical Engineering and Applied Mathematics, Caltech, 1987 (with Honors) Professional Experience 08/02 – present 07/01 – 08/02 11/96 – 07/01 07/87 – 08/91 University of Colorado at Boulder, Assistant Professor, Dept. of Computer Science Evolution Robotics, Inc. , Senior Research Scientist NASA JPL, Technical Group Leader/Sr. Staff, Machine Learning Group MIT Lincoln Laboratory, Associate Staff, Battlefield Surveillance Group Selected Honors and Awards NASA Group Achievement Awards (1996,1999) National Science Foundation, Graduate Student Fellowship, 1995-1996. National Merit Scholarship, 1983-1987. Michigan Mathematics Prize Competition Scholarship, 1982-1983. Professional Activities Lead Organizer of a series of SIAM Workshops on Mining Scientific and Engineering Datasets Program Committees for Computer Vision and Pattern Recognition Conference (CVPR), Workshop on Data Mining in Resource-Constrained Environments, SIAM Int. Conference on Data Mining, SPIE Data Mining and Knowledge Discovery (AeroSense99, AeroSense00, AeroSense01), and Knowledge Discovery in Databases (KDD98). Reviewer for various federal programs and agencies (NSF, NASA, JPL, LLNL). Also, books, journals, and leading technical conferences (CVPR, ICCV, ECCV, KDD, SDM, AAAI). Invited Panelist: NASA Industry Day Forum; SPIE Data Mining and Knowledge Discovery Conf. Selected Publications and Presentations P. Wetzler, R. Honda, B. Enke, W.J. Merline, C.R. Chapman, M.C.Burl, “Learning to Detect Small Craters”, (in review) 18 M.C. Burl and A. Lakshmikumar, “Joint Appearance and Trajectory-based Data Association for Multiobject Tracking” (in review) M.C. Burl, “Mining Patterns of Activity from Video Data”, SIAM Int. Conf. on Data Mining, (May 2004) S. Chien, et al, “Autonomous Science on the EO-1 Mission”, iSAIRAS, Nara, Japan (May 2003). M.C. Burl, T. Vaid, B. Sisk, and N.S. Lewis, “Classification Performance of Carbon Black-Polymer Composite Vapor Detector Arrays as a Function of Array Size and Detector Composition”, Sensors and Actuators B, (2002). M.C. Burl, chapter “Mining Large Image Collections”, In Data Mining for Scientific and Engineering Applications, R. Grossman, C. Kamath, V. Kumar, and R. Namburu (Eds), Kluwer Academic, (2001). D. DeCoste, M.C. Burl, A. Hopkins, N.S. Lewis, “Support Vector Machines and Kernel Fisher Discriminants: A Case Study using Electronic Nose Data”, Fourth Workshop on Mining Scientific Datasets, (2001). M.C. Burl, W.J. Merline, W. Colwell, E.B. Bierhaus, C.R. Chapman, “Automated Detection of Craters and Other Geological Features”, Int. Symposium on AI, Robotics, and Automation for Space (i-SAIRAS), (Jun 2001) W.J. Merline, W. Colwell, V. Gor, C.R. Chapman, E.B. Bierhaus, M.C. Burl, P. Tamblyn, “Automated Search for Moons of Eros in NEAR Approach Mosaics”, iSAIRAS, Montreal, Canada (Jun 2001). D. DeCoste and M.C. Burl, “Achieving Distortion-invariant recognition via Jittered Queries”, Proc. Computer Vision and Pattern Recognition Conf. (CVPR00), (Jun 2000) M.C. Burl and D. Lucchetti, “Autonomous Visual Discovery”, SPIE Aerosense Conference: Data Mining and Knowledge Discovery, Orlando, FL (Apr 2000). M.C. Burl, C. Fowlkes, J. Roden, A. Stechert, and S. Mukhtar, “Diamond Eye: A Distributed Architecture for Image Data Mining”, In SPIE Aerosense Conference: Data Mining and Knowledge Discovery, Orlando, FL, (Apr 1999). M.C. Burl, L. Asker, P. Smyth, U.M. Fayyad, P. Perona, L. Crumpler, and J. Aubele, “Learning to Recognize Volcanoes on Venus”, Machine Learning Journal, Vol. 30, No. 2/3, pp. 165-194, (Feb/Mar 1998). T.K. Leung, M.C. Burl, and P. Perona, “Probabilistic Affine Invariants for Recognition”, Computer Vision and Pattern Recognition Conf. (CVPR98), Santa Barbara, CA (Jun 1998). M.C. Burl, M. Weber, and P. Perona, “A Probabilistic Approach to Object Recognition Using Local Photometry and Global Geometry”, Fifth European Conf. on Computer Vision, Freiburg, Germany, (Jun 1998). M.C. Burl, “Recognition of Visual Object Classes”, Ph.D. Dissertation, Dept. of Electrical Engineering, California Institute of Technology, Pasadena, CA (Jun 1997). M.C. Burl, T.K. Leung, and P. Perona, “Recognition of Planar Object Classes”, Computer Vision and Pattern Recognition Conf. (CVPR96), San Francisco, CA (1996). S. Chien, J. Gratch, and M. Burl, “On the efficient allocation of resources for hypothesis evaluation: a statistical approach”, IEEE Trans. Pattern Analysis and Machine Intelligence, 17(7):652-665, 1995. M.C. Burl, T.K. Leung, and P. Perona, “Face Localization via Shape Statistics”, In Intl Workshop on Automatic Face and Gesture Recognition, Zurich, Switzerland, (1995). L.M. Novak, M.C. Burl, and W.W. Irving, “Optimal polarimetric processing for enhanced target detection”, IEEE Trans on AES, 29(1):234-244, (Jan 1993). L.M. Novak and M.C. Burl, “Optimal speckle reduction in polarimetric SAR imagery”, IEEE Trans. On AES, 26 (2):293-305, (Mar 1990). 19 Dr. William Merline (Co-I) EDUCATION Ph.D. B.S. Planetary Sciences, University of Arizona, 1995 Ph.D. minor: Physics Dissertation title: Observations of Small-Amplitude Oscillations in the Radial Velocity of Arcturus Dissertation director: Dr. Robert S. McMillan Physics and Astronomy, University of Wisconsin - Madison, 1978 Mathematics, University of Wisconsin - Madison, 1978 BRIEF BIOGRAPHY Dr. Merline is Principal Investigator of programs, funded by NASA and NSF, to perform a ground-based search for asteroidal satellites. The programs employ the relatively new technology of adaptive optics to reduce the blurring caused by the Earth’s atmosphere. This work is carried out at the Keck and CFHT telescopes atop Mauna Kea, Hawaii. Dr. Merline led this international team in the first-ever discovery of an asteroidal satellite from the Earth (ground-based or HST), that of 45 Eugenia in 1998. In 2000, the team announced discovery of another moon, that of 762 Pulcova, and the first double asteroid to be imaged, that of 90 Antiope. He also has two funded programs under NASA’s Applied Information Systems Program to develop artificial-intelligence tools for crater detection and analysis, and also to develop web-based science analysis tools. He is also managing the SwRI-side of a project, with JPL, to produce an on-board software technology-demonstration, using artificial intelligence, to automate, among other tasks, a search for asteroidal satellites on future missions. The method is already being applied to images of Eros from NEAR. He is an Associate Member of the Imaging & Near-Infrared Spectrometer Team of the NEAR (Near-Earth Asteroid Rendezvous) spacecraft mission. He had the prime responsibility for the search for satellites of asteroid Mathilde using NEAR images, and during the 1999 flyby and 2000 orbital tour of asteroid Eros. Dr. Merline's Ph.D. dissertation was entitled "Observations of Small-Amplitude Oscillations in the Radial Velocity of Arcturus". During this work, he helped design, build, test, calibrate, and operate a spectrometer designed for extreme sensitivity to small changes in the radial velocities of stars. The dissertation work led directly to the discovery of what will likely be a new class of variable stars (K giants), previously thought to be stable. His work has shown that the oscillations in Arcturus are complex and analogous to solar acoustic oscillations. He also produced a computational/theoretical study showing methods for optimizing the amount of information obtained in radial velocity observations. Astronomical interests include the detection of extra-solar planetary systems, velocity variations in the Sun and stars, the solar/stellar connection, and optimization of radial velocity determination and of photometric observations using CCD detectors. He is associated with the imaging team of the Galileo spacecraft mission. He (with Clark Chapman) had the prime responsibility for analysis of the Galileo imaging data of the Shoemaker-Levy 9 collision with Jupiter, the only direct images of the actual impacts. He is currently involved with analysis of the Galileo images of Jupiter's satellites Europa, Ganymede, and Callisto, attempting to determine surface histories from the cratering record. He has played a major role in the analysis of Galileo imaging data of Gaspra, Ida, and Dactyl. He assisted in the determination of the orbit of the satellite of Ida, Dactyl, and in the associated estimates of Ida's bulk density. He had the prime responsibility for the search for additional satellites of Ida and also performed a cursory search for satellites of Gaspra. He was heavily involved in the post-discovery search for Dactyl using HST images, in support of the orbit-determination effort on Galileo. He is Principal Investigator for a program to study cratering on the Galilean satellites under NASA’s Jovian System Data Analysis Program. RECENT POSITIONS 1998-present Senior Research Scientist, Southwest Research Institute, Boulder, CO 1996-1998 Postdoctoral Researcher, Southwest Research Institute, Boulder, CO 1989-1996 Research Associate, Planetary Science Institute, Tucson, AZ PROFESSIONAL ACTIVITIES, HONORS, & AWARDS Member: Intl. Astronomical Union (IAU), Amer. Astronomical Society (AAS), Div. for Planetary Sciences (DPS) of the AAS, Solar Physics Div. of the AAS, Amer. Geophysical Union, Meteoritical Society, Planetary Society Principal Investigator on 6 NSF/NASA grants, Co-I on 3 NSF/NASA grants Asteroid 7607 Billmerline named in his honor NASA Certificate of Recognition, 1999, “Technically Significant Software: Satellite Detector” NASA Certificate of Recognition, 1998, “Technically Significant Software: Onboard UV Spectral Analyzer” RECENT PUBLICATIONS Merline, W.J., Close, L.M., Dumas, C., Shelton, J.C., Menard, F., Chapman, C.R., Slater, D.C. “Discovery of Companions to Asteroids 762 Pulcova and 90 Antiope by Direct Imaging”, BAAS 32, 1309 (2000). Veverka, J., Robinson, M., Thomas, P., Murchie, S., Bell III, J.F., Izenberg, N., Chapman, C., Harch, A., Bell, M., Carcich, B., Cheng, A., Clark, B., Domingue, D., Dunham, D., Farquhar, R., Gaffey, M.J., Hawkins, E., Joseph, J., Kirk, R., Li, H., Lucey, P., Malin, M., Martin, P., McFadden, L., Merline, W.J., Millier, J.K., Owen, Jr., W.M., Peterson, C., Prockter, L, Warren, J., Wellnitz, D., Williams, B.G., Yeomans, D.K. “NEAR at Eros: imaging and spectral results”, Science 289, 2088-2097 (2000). Merline, WJ., Close, L.M., Dumas, C., Chapman, C.R., Roddier, F., Menard, F., Slater, D.C., Duvert, G., Shelton,C, Morgan,T “Discovery of a moon orbiting the asteroid 45 Eugenia”, Nature 401, 565.(1999) Merline, W.J., “Precise Velocity Observations of K-Giants: Evidence for Solar-like Oscillations in Arcturus”, Proc. of IAU Colloquium 170, Vol. 185, Precise Stellar Radial Velocities (J.B. Hearnshaw & C.D. Scarfe, eds.), p. 187 (1999). Merline, W.J., Close, L.M., Dumas, C., Chapman, C.R., Roddier, F., Menard, F., Colwell, W., Slater, D.C., Duvert, G., Shelton, C., Morgan, T. “Discovery of a Satellite of (45) Eugenia”, abstract for invited talk, Asteroids, Comets, Meteors ’99 (1999). Merline, W.J., Close, L.M., Dumas, C., Chapman, C.R., Roddier, F., Menard, F., Slater, D., Duvert, G., Shelton, C. Morgan, T., Dunham, D.W. “S/1998(45)1”, IAU Circular 7129 (1999). Merline, W.J., Chapman, C.R., Colwell, W.B., Veverka, J., Harch, A., Bell, M., Bell, J.F. III, Thomas, P., Clark, B.E., Martin, P., Murchie, S., Cheng, A., Domingue, D., Izenberg, N., Robinson, M., McFadden, L., Wellnitz, D., Malin, M., Owen, W., Miller, J. “Search for Satellites Around Asteroid 433 Eros from NEAR Flyby Imaging”, Proc. Lunar & Planetary Sci. Conf. 30, 2055 (1999). Veverka, J., Thomas, P., Harch, A., Clark, B., Bell, J.F., Carcich, B., Joseph, J., Murchie, S., Izenberg, N., Chapman, C., Merline, W., Malin, M., McFadden, L., Robinson, M., “NEAR Encounter with Asteroid 253 Mathilde: Overview”, Icarus 140, 3 (1999). Murchie, S., Robinson, M., Hawkins, S.E., Harch, A., Helfenstein, P., Thomas, P., Peacock, K., Owen, W., Heyler, G., Murphy, P., Darlington, E.H., Keeney, A., Gold, R., Clark, B., Izenberg, N., Bell, J.F., Merline, W., Veverka, J. “Inflight Calibration of the NEAR Multispectral Imager”, Icarus 140, 66 (1999). Chapman, C.R., Merline, W.J., Thomas, P. “Cratering on Mathilde”, Icarus 140, 28 (1999). Thomas, P.C., Veverka, J., Bell, J.F. Clark, B.E., Carcich, B., Joseph, J., Robinson, M. McFadden, L.A., Malin, M.C., Chapman, C.R., Merline, W., Murchie, S. “Mathilde: Size, Shape, and Geology”, Icarus 140, 17 (1999). Merline, W.J. “Evidence for Solar-Like Oscillations in Arcturus”, Proc. ASP Conference Series, Vol. 135, A Half-Century of Stellar Pulsation Interpretation, (P. Bradley & J. Guzik, eds.), p 208 (1998). 1 Dr. Clark R. Chapman (Co-I) Current Position Previous Position Education Institute Scientist, Dept. of Space Studies, Southwest Research Institute, Boulder, CO (1996-) Senior Scientist, Planetary Science Institute (SJI; SAIC), Tucson, AZ (1971-1996) A.B., Astronomy, Harvard College (1967) M.S., Meteorology, Massachusetts Institute of Technology (1968) Ph.D., Planetary Science, Massachusetts Institute of Technology (1972) Relevant Experience Galileo Imaging Science Team; Near Earth Asteroid Rendezvous (NEAR) Mission MSI/NIS Imaging/Spectroscopy Team, MESSENGER Science Team; telescopic, interpretation, modelling, and theoretical studies of asteroids, comets, planetary surfaces, early solar system processes; writing and public outreach. Professional Societies American Astronomical Society, Division for Planetary Sciences (Chairman 1982-1983; Member DPS Committee 1978-1981; Chairman, Program Committee 1976-1977; Chairman, Nominating Committee 1977; Chairman, Kuiper/Urey Prize Subcommittee 1983-1984; Sagan Medallist 1999) American Geophysical Union, Planetology Section (Editor, Journal of Geophysical Research-Planets 1991-1994) American Association for the Advancement of Science (Chairman, Astronomy Nom. Comm. 1981; Elected Fellow 2000) Meteoritical Society (Chairman, Leonard Medal Comm. 1983-84, Fellow Elected 1988, Council Member 1992-96) International Astronomical Union Commission 15 (President 1982-1985; Member Org. Comm. 1976-1985) Scientific Committee Work and Consulting Member URSA Lunar and Planetary Science Council of the Lunar and Planetary Institute Member Lunar Science Review Panel Member NASA Terrestrial Bodies Science Working Group Member Committee on Planetary Exploration (COMPLEX) Space Science Board, National Academy of Sciences Member Management Operations Working Group for NASA Infrared Telescope Facility Member Small Bodies Working Group, NASA Solar System Exploration Committee (SSEC) Member Primitive Bodies Study Team, NAS/ESF Joint Working Group on Cooperation in Planetary Exploration Member NASA Solar System Exploration Management Council Head Education Subcommittee Member Comet Rendezvous Asteroid Flyby Science Working Group Member Near Earth Asteroid Rendezvous Study Group Member/Chairman MOWGroup for NASA Planetary Astronomy Program Member NASA Planetary Astronomy Committee Member M.I.T. Corp. Visiting Committee to Dept. of Earth, Atmospheric, and Planetary Sciences Member Organizing Committee, Asteroids II meeting Chairman Organizing Committee, International Conference on Near-Earth Asteroids Member NASA International Near-Earth-Object Detection Workshop Consultant NASA Near-Earth Objects Survey Working Group Member Organizing Committee, IAU Colloq. Mercury and the Moon Member Workshop on Prediction in the Earth Sciences: Use and Misuse in Policy Making (Geol. Soc. Am. Inst. for Environmental Education) Member Task Group on Sample Return from Small Solar System Bodies, National Research Council 1997-1998 Member/Assoc. Editor Editorial Board, Icarus 2 Relevant Publications (selected from hundreds) J. Veverka, M. Robinson, P. Thomas, S. Murchie, J.F. Bell III, N. Izenberg, C. Chapman, A. Harch, M. Bell, B. Carcich, A. Cheng, B. Clark, D. Domingue, D. Dunham, R. Farquhar, M.J. Gaffey, E. Hawkins, J. Joseph, R. Kirk, H. Li, P. Lucey, M. Malin, P. Martin, L. McFadden, W.J. Merline, J.K. Miller, W. M. Owen Jr., C. Peterson, L. Prockter, J. Warren, D. Wellnitz, B.G. Williams, D.K. Yeomans 2000. NEAR at Eros: imaging and spectral results. Science 289, 2088-2097. C.R. Chapman 2000. The asteroid/comet impact hazard:homo sapiens as dinosaur? In Prediction: Science, Decision Making, and the Future of Nature (ed. D. Sarewitz, R.A. Pielke, Jr. & R. Byerly; Island Press, Washington D.C.), pp. 107-134. W.J. Merline, L.M. Close, C. Dumas, C.R. Chapman, F. Roddier, F. Menard, D.C. Slater, G. Duvert, C. Shelton & T. Morgan 1999. Discovery of a moon orbiting the asteroid 45 Eugenia. Nature 401, 565-568. L. Orgel, M. A'Hearn, J. Bada, J. Baross, C. Chapman, M. Drake, J. Kerridge, M. Race, M. Sogin, & S. Squyres 2000. Sample return from small solar system bodies. Adv. Space Res.25 (2), 239-248. J.M. Moore, E. Asphaug, D. Morrison, J.R. Spencer, C.R. Chapman, B. Bierhaus, R.J. Sullivan, F.C. Chuang, J.E. Klemaszewski, R. Greeley, K.C. Bender, P.E. Geissler, P. Helfenstein & C.B. Pilcher 1999. Mass movement and landform degradation on the icy Galilean satellites: Results of the Galileo nominal mission. Icarus 140, 294-312. R.T. Pappalardo, M.J.S. Belton, H.H. Breneman, M.H. Carr, C.R. Chapman, G.C. Collins, T. Denk, S. Fagents, P.E. Geissler, B. Giese, R. Greeley, R. Greenberg, J.W. Head, P. Helfenstein, G. Hoppa, S.D. Kadel, K.P. Klaasen, J.E. Klemaszewski, J. Magee, A.S. McEwen, J.M. Moore, W.B. Moore, G. Neukum, C.B. Phillips, L.M. Prockter, G. Schubert, D.A. Senske, R.J. Sullivan, B.R. Tufts, E.P. Turtle, R. Wagner & K.K. Williams 1999. Does Europa have a subsurface ocean? Evaluation of the geological evidence. J. Geophys. Res.--Planets 104, 24015-24055. J. Veverka, P.C. Thomas, J.F. Bell III, M. Bell, B. Carcich, B. Clark, A. Harch, J. Joseph, P. Martin, M. Robinson, S. Murchie, N. Izenberg, E. Hawkins, J. Warren, R. Farquhar, A. Cheng, D. Dunham, C. Chapman, W.J. Merline, L. McFadden, D. Wellnitz, M. Malin, W.M. Owen Jr., J.K. Miller, B.G. Williams & D.K. Yeomans 1999. Imaging of asteroid 433 Eros during NEAR's flyby reconnaissance. Science 285 562- 564. C.R. Chapman, W.J. Merline & P. Thomas 1999. Cratering on Mathilde. Icarus 140, 28-33. M.H. Carr, M.J.S. Belton, C.R. Chapman, M.E. Davies, P. Geissler, R. Greenberg, A.S. McEwen, B.R. Tufts, R. Greeley, R. Sullivan, J.W. Head, R.T. Pappalardo, K.P. Klaasen, T.V. Johnson, J. Kaufman, D. Senske, J. Moore, G. Neukum, G. Schubert, J.A. Burns, P. Thomas, J. Veverka 1998. Evidence for a subsurface ocean on Europa. Nature 391, 363. J. Veverka, P. Thomas, A. Harch, B. Clark, J. Bell, B. Carcich, J. Joseph, C. Chapman, W. Merline, M. Robinson, M. Malin, L.A. McFadden, S. Murchie, S. E. Hawkins III, R. Farquhar, N. Izenberg, A. Cheng 1997. NEAR's flyby of 253 Mathilde: Images of a C asteroid. Science 278, 2109-2114. C.R. Chapman 1997. Gaspra and Ida: implications of spacecraft reconnaissance for NEO issues. In Near-Earth Objects: The United Nations Conference (ed. J.L. Remo, Annals NY Acad. Sci. 822) 227- 235. C.R. Chapman 1996. The risk to civilization from extraterrestrial objects and implications of the Shoemaker-Levy 9 comet crash. Abhandlungen der Geologischen Bundeanstalt (Wien) 53, 51-54. C.R. Chapman 1996. S-type asteroids, ordinary chondrites, and space weathering: the evidence from Galileo's Flybys of Gaspra and Ida. (Invited review). Meteoritics & Planet. Sci., 31, 699-726. C.R. Chapman 1996. Galileo observations of the impacts. The Collision of Comet Shoemaker-Levy 9 and Jupiter (eds. K.S. Noll, H.A. Weaver, P.D. Feldman; Cambridge Univ. Press), 121-132. C.R. Chapman, E.V. Ryan, W.J. Merline, G. Neukum, R. Wagner, P.C. Thomas, J. Veverka, R.J. Sullivan 1996. Cratering on Ida. Icarus 120, 77-86. C.R. Chapman, J. Veverka, M.J.S. Belton, G. Neukum, and D. Morrison 1996. Cratering on Gaspra. Icarus 120, 231-245. C.R. Chapman, J. Veverka, P.C. Thomas, K. Klaasen, M.J.S. Belton, A. Harch, A. McEwen, T.V. Johnson, P. Helfenstein, M.E. Davies, W.J. Merline, T. Denk 1995. Discovery and physical properties of Dactyl, a satellite of asteroid 243 Ida. Nature 374, 783-785. C.R. Chapman and D.P. Cruikshank 1995. Prelude to exploration and the Voyager mission to Neptune. In Neptune and Triton (Ed. D.P. Cruikshank, Univ. of Arizona Press, Tucson), 3-14. C.R. Chapman, W.J. Merline, K. Klaasen, T.V. Johnson, C. Heffernan, M.J.S. Belton, A.P. Ingersoll, and the Galileo Imaging Team 1995. Preliminary results of Galileo direct imaging of S-L 9 impacts. Geophys. Res. Lett. 22, 15611564. 3 Dr. Rebecca Castano (Co-I) Jet Propulsion Laboratory 4800 Oak Grove Drive, MS 126-347 Pasadena, CA 91109 Tel: (818) 393-5344 Fax: (818) 393-5244 Email: [email protected] Education Ph.D., Electrical and Computer Engineering., University of Illinois, Urbana, IL, 1998. Dissertation: Yield Estimation for Multichip Module Ceramic Substrates using Visual Inspection M.S., Electrical and Computer Engineering, University of Illinois, Urbana, IL Thesis: A Probabilistic Framework for Grouping Image Features B.S., (high honors) Electrical and Computer Engineering, University of Iowa, Iowa City, IA Professional Experience 2002-present 1998 -2002 1995 -1995 1994 - 1998 1991 – 1992 1991 – 1991 1989 - 1990 Supervisor, Machine Learning Systems Group – Jet Propulsion Laboratory Electrical Engineer - Senior, Jet Propulsion Laboratory, Caltech Summer Technical, Oak Ridge National Laboratory, Oak Ridge, TN Research Assistant, Beckman Institute, University of Illinois, Urbana, IL Teaching Assistant, Dept. of Elec. & Comp. Eng., U. of Illinois, Urbana, IL Member Technical Staff, Center for I. T. and the Dept. of Mechanical Engineering, U. of Wyoming, Laramie, WY Summer Intern, Center for IT and ME, U. Wyoming, Laramie, WY Honors and Awards National Science Foundation Graduate Fellowship, 1991-1994 NCAA Postgraduate Scholarship Recipient, 1991 Professional Activities Reviewer: TPAMI, IJCV, ICRA, ICPR Selected Publications R. Castaño, R. C. Anderson, T. Estlin, D. DeCoste, F. Fisher, D. Gaines, D. Mazzoni, M. Judd, "Rover Traverse Science for Increased Mission Science Return," Proc. IEEE Aerospace Conf., Big Sky, Montana, March 2003. M. Gilmore, R. Castano, T. Mann, R. C. Anderson, E. Mjolsness, R. Manduchi, and R. S. Saunders, “Strategies for autonomous rovers at Mars”, in J. of Geophysical Res., Vol. 105, No. E12, Dec. 2000 pp. 29223-29237. J. Fox, R. Castano, and R. C. Anderson, “Onboard autonomous rock shape analysis for Mars rovers,” IEEE Aerospace Conference, Big Sky, Montana, Mar. 2002. R. Castano, R.C. Anderson, J. Fox, J.M. Dohm, A.F.C. Haldemann, and W. Fink, “Automating Shape Analysis of Rocks on Mars,” Lunar and Planetary Science Conference, March 2002. R. Castano, R. Manduchi, and J. Fox, “"Classification experiments on real world texture", Third Workshop on Empirical Evaluation Methods in Computer Vision, Dec. 2001. V. Gor, R. Castano, R. Manduchi, R. C. Anderson and E. Mjolsness, “Autonomous rock detection for Mars terrain,” American Institute of Aeronautics and Astronautics, Aug. 2001. R. C. Anderson, R. Castano, E. Mjolsness, A. Davies, J. Fox, T. Stough, and M. Gilmore, “Autonomous Rock Identification Using Visual Texture”, GSA Abstracts with Program Vol. 32, No. 7, Nov 2000. R. L. Castano, T. Mann, and E. Mjolsness, “Texture analysis for Mars rover images,” Proc. Applications of Digital Image Processing XXII, SPIE Vol. 3808, July, 1999. M. S. Gilmore, R. Castano, B. Ebel, E. Guiness, T. Mann, E. Mjolsness, T. Roush and R. S. Saunders, “Spectroscopic measurements at Silver Lake, CA, testbed for the FIDO rover, “ AGU, Dec. 1998. 4