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MULTIMEDIA DATABASES AND QUERYING TECHNIQUES By: Rohit Kulkarni CS 2310 – Spring 2008 AGENDA  Background  Problem Definition  Challenges BACKGROUND  What is MMDBMS?  Normalization framework  What is data fusion?  The general problem  Querying technique MMDBMS ARCHITECTURE REQUIREMENTS FOR MMDBMS Traditional DBMS capabilities  Huge capacity for storage management  Information retrieval capabilities  Media integration, composition and representation  Multimedia query support  Multimedia interface and interactivity  Performance  ISSUES IN MMDBMS Multimedia data modeling  Multimedia object storage  Multimedia integration, presentation and QOS  Multimedia indexing, retrieval and browsing  Multimedia query support  Distributed multimedia database management  System support  PROBLEM DEFINITIONS  Extended Dependencies  The relational model  Similarity theory  Tuple distance function AN EXAMPLE  Define a functional dependency between attributes FINGERPRINT and PHOTO of police database, and use the fingerprint matching function FINGERCODE for comparing digital fingerprint [JPH00], and the similarity technique used by QBIC for comparing photo images, we would write as follows FINGERPRINTFINGERCODE(t’) PHOTOQBIC(t’’) INFERENCE RULES FOR MFDS Reflexive rule  Augmentation rule  Transitive rule  Decomposition rule  Union rule  Pseudotransitive rule  NORMAL FORMS IN MULTIMEDIA DATABASES    Normal forms are used to derive database schemes that prevent manipulation anomalies Similar anomalies can arise in multimedia database Types of normal forms are 1MNF, 2MNF , 3MNF and 4MNF SENSOR DATA FUSION    Background: Need for Multiple Sensors:- data from a single sensor yields poor results in object recognition Sensor Management Model SENSOR MANAGEMENT MODEL SENSOR DATA FUSION  Problems:  Association of objects from different Sensors  Tracking NEED FOR QUERY TECHNIQUE • Problem with existing query techniques • Why not SQL? • To support the retrieval and fusion of multimedia information from multiple sources and distributed databases, a spatial/temporal query language called QL has been proposed FEATURES OF QL    Easy to learn as syntax is similar to SQL Allows user to specify queries for both Multimedia data sources and Multimedia databases Supports multiple sensor sources and systematic modification of queries OPERATOR CLASSES  The operators in QL can be categorized with respect to their functionality. The two main classes are:  transformational operators (the σ-operators)  fusion operators (the -operators).  TRANSFORMATIONAL OPERATORS  Definition: A σ-operator is defined as an operator to be applied to any multi-dimensional source of objects in a specified set of intervals along a dimension. The operator projects the source along that dimension to extract clusters TRANSFORMATIONAL OPERATORS (CONTD) As an example, if we write a σ-expression for extracting the video frame sequences in the time intervals [t1-t2] and [t3-t4] from a video source VideoR.  The expression will be  is σtime([t1-t2], [t3-t4]) VideoR where VideoR is projected along the time dimension to extract clusters (frames in this case) whose projected positions along the time dimension are in the specified intervals. FUSION OPERATORS Much more complex as it deals with Sensor data fusion  Requires input data in different time periods from multiple sensors  The output of the fusion-operator is some kind of high level, qualitative representation of the fused object, and may include object type, attribute values and status values.  IS THERE A MOVING VEHICLE PRESENT IN THE GIVEN AREA AND IN THE GIVEN TIME INTERVAL? IS THERE A MOVING VEHICLE PRESENT IN THE GIVEN AREA AND IN THE GIVEN TIME INTERVAL? • Corresponding query: type,position, direction (motion(moving) type(vehicle) xy(*)  (T)T mod 10 = 0 and T>t1 and T <t2 media_sources (video)media_sources ype (vehicle) xyz(*)  (T) T>t1 and T<t2 media_sources(laser_radar) media_sources) EXPERIMENTAL PROTOTYPE CHALLENGES   Handle large number of different sensors Replacing manual query with a semi-automatic or fully automatic query refinement process APPLICATIONS OF MMDBMS Education- digital libraries, training, presentation  Healthcare- telemedicine, health information management  Entertainment- interactive TV, video on demand  Information dissemination- news, TV broadcasting  And many more!  REFERENCES       Intelligent Querying Techniques for Sensor Data Fusion by ShiKuo Chang, Gennaro Costagliola, Erland Jungert and Karin Camara A Normalization Framework for Multimedia Databases by S.K. CHANG, V. DEUFEMIA, G. POLESE Querying distributed Multimedia databases and data sources for sensor data fusion by S.K.Chang, Gennaro Costagliola, Erland Jungert and Francesco Orciuoli Multimedia database management-requirements and issues by Donald A. Adjeroh and Kingsley C. Nwosu Fuzzy Queries in Multimedia database system by Ronald Fagin Bayesian Approaches to Multi-Sensor data fusion by Olena Punska, St. John’s CollegeMultimedia database management-requirements and issues by Donald A. Adjeroh and Kingsley C. Nwosu Querying distributed Multimedia databases and data sources for sensor data fusion by S.K.Chang, Gennaro Costagliola, Erland Jungert and Francesco Orciuoli MULTIMEDIA DATABASE AND QUERYING TECHNIQUES By: Rohit Kulkarni CS 2310 – Spring 2008  Thank you