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Perspec ves on Ar ficial Intelligence: Three Ways to be Smart
Perspec ves on Ar ficial Intelligence: Three Ways to be Smart

... influential in providing inspirations for techniques for doing machine vision. Statisticians are also experienced at recognizing patterns in data, and sometimes ANNs can be seen as a method of ‘doing statistics’ in a brainlike fashion (Rumelhart et al. 1986; McClelland et al. 1986; Arbib 1995). In v ...
Learning companions 1
Learning companions 1

... Human & LC solve separately, then compare (competition) On each step, human & LC negotiate who will do it & what will be done (collaboration) Human is reaching mastery & LC challenges them with strongly asserted, but wrong opinions – trip them up Human solves problem while delating simple stuff to t ...
Artificial Intelligence
Artificial Intelligence

... On the evidence that what we will and won’t say and what we will and won’t accept can be characterized by rules, it has been argued that, in some sense, we “know” the rules of our language. ...
Advanced Artificial Intelligence CS 687 Jana Kosecka, 4444
Advanced Artificial Intelligence CS 687 Jana Kosecka, 4444

... Utility-based agent ...
Tutorial for the 2016 IEEE International Conference on Real‐time
Tutorial for the 2016 IEEE International Conference on Real‐time

... investigation was to show that evolutionary algorithms, under certain conditions, are capable of real-time control of deterministic chaos, when the cost function is properly defined as well as parameters of selected evolutionary algorithm. Investigation consists of four different case studies with in ...
Intelligence, Control and the Artificial Mind
Intelligence, Control and the Artificial Mind

... The intelligent control community tried to mimic concrete human thought processes in search for competence. The fragility of the realized systems claimed however for a new foundation that was not going to be found in the so called new AI or in postmodern robotics. Cognitive science, on the other sid ...
Artificial Intelligence and Robotics
Artificial Intelligence and Robotics

... area of vision and phased action. Recent advancements of technologies, including computation, robotics, machine learning communication, and miniaturization technologies, brings us closer to futuristic visions of compassionate intelligent devices. The missing element is a basic understanding of how t ...
Introduction - CSE@IIT Delhi
Introduction - CSE@IIT Delhi

... The spirit is willing but the flesh is weak. (English) The vodka is good but the meat is rotten. (Russian) ...
030.Deliberative-SPA - Electrical & Computer Engineering
030.Deliberative-SPA - Electrical & Computer Engineering

... – similar to ‘classical’ artificial intelligence approach sense ...
USI1
USI1

... • From whom/ what do we get this information? – Other participants – Existing variables ...
記錄 編號 6668 狀態 NC094FJU00392004 助教 查核 索書 號 學校
記錄 編號 6668 狀態 NC094FJU00392004 助教 查核 索書 號 學校

... pp. 154-156. [14] J. Y. Kuo, “A document-driven agent-based approach for business”, processes management. Information and Software Technology, 2004, Vol. 46, pp. 373-382. [15] J. Y. Kuo, S.J. Lee and C.L. Wu, N.L. Hsueh, J. Lee. Evolutionary Agents for Intelligent Transport Systems, International Jo ...
記錄編號 6668 狀態 NC094FJU00392004 助教查核 索書號 學校名稱
記錄編號 6668 狀態 NC094FJU00392004 助教查核 索書號 學校名稱

... 式學習精煉最原始的目標(top-level goals)。 並以機器人足球比賽用來說明我們的 方法。 而且,我們顯示如何精煉以強效式學習演化目標於足球員之心智狀態 This paper presents an adaptive approach to address the goal evolution of the intelligent agent. When agents are initially created, they have some goals and few capabilities. Each capability composes by one or more act ...
An Artist at RPI Who Draws on the Fu- ture
An Artist at RPI Who Draws on the Fu- ture

... the civil courts as a matter of product liability. ‘When the first robot carpet-sweeper sucks up a baby, who will be to blame?’ asks John Hallam, a professor at the University of Southern Denmark in Odense. If a robot is autonomous and capable of learning, can its designer be held responsible for al ...
25-Concepts - My FIT (my.fit.edu)
25-Concepts - My FIT (my.fit.edu)

... The robot ascends a potential field composed of repelling forces asserted from obstacles and an attracting force to the goal configuration ...
From Imitation Learning to Innovation in Designing - Neuron
From Imitation Learning to Innovation in Designing - Neuron

... be ranked against all the other chromosomes. Optimal chromosomes, or at least chromosomes which are more optimal, are allowed to breed and mix their datasets by any of several techniques, producing a new generation that will (hopefully) be even better. We could say that the fitness function is at th ...
concept of artificial intelligence in various application of robotics
concept of artificial intelligence in various application of robotics

... can move. As an example lets contemplate a rigid robot like an autonomous underwater vehicle (AUV). It has six degrees of freedom, three for its (x;y;z) location in space and three for its angular orientation (also known as yaw, roll and pitch). These DOFs define the kinematic state of the robot. Th ...
Bibliography
Bibliography

... [25] Miglino, O., Lund, H.H., and Nolfi, S. Evolving Mobile Robots in Simulated and Real Environments, Artificial Life, 2, pp. 417-434, 1996 [26] Moriarty, D. E. and Miikkulainen, R. Evolving obstacle avoidance behavior in a robot arm. In: From Animals to Animats: Proc. of the 4th Int. Conf. on Simu ...
Proposal_4
Proposal_4

... Presently, many researchers in social co-robotics use Wizard of Oz (WoZ) control extensively, to solve most of the aforementioned problems, such as natural language processing, social understanding, dynamic space operation, etc. [23]. The original idea behind the WoZ paradigm was to be part of an it ...
Introduction to Robotics Class
Introduction to Robotics Class

... • 6) The worlds where mobile robots will do useful work are not constructed of exact simple polyhedra. • 7) Visual data is useful for high level tasks. Sonar may only be good for low level tasks where rich environmental descriptions are unnecessary. • 8) The robot must be able to perform when one or ...
Chapter13
Chapter13

... Neural Networks – Each neuron has multiple input tentacles called dendrites and one primary output tentacle called an axon – A series of connected neurons forms a pathway – The gap between axons and dendrites is called a ...
Artificial Intelligence
Artificial Intelligence

... On the evidence that what we will and won’t say and what we will and won’t accept can be characterized by rules, it has been argued that, in some sense, we “know” the rules of our language. ...
Tyra  - Marina View School
Tyra - Marina View School

... We could chose not to give robots free will. We wouldn’t be able to make them powerful enough. Because there are more humans then robots. If humans invent them they’ll no how to stop them. ...
Werbos_IECON05_tutorial
Werbos_IECON05_tutorial

... For optimal performance in the general nonlinear case (nonlinear control strategies, state estimators, predictors, etc…), we need to adaptively estimate nonlinear functions. Thus we must use universal nonlinear function approximators.  Barron (Yale) proved basic ANNs (MLP) much better than Taylor s ...
New Mathematics and Natural Computation Special Issue on Agent
New Mathematics and Natural Computation Special Issue on Agent

... has been devoted to the development and improvement of agent-based computational techniques to study macroeconomic issues. Agentbased models have been drawing considerable attention in that they are flexible modeling tools that allow accounting for features such as agents heterogeneity and interacti ...
Weak and strong AI, concept of problem solving by searching
Weak and strong AI, concept of problem solving by searching

... Autonomous car ...
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Adaptive collaborative control

Adaptive collaborative control is the decision-making approach used in hybrid models consisting of finite-state machines with functional models as subcomponents to simulate behavior of systems formed through the partnerships of multiple agents for the execution of tasks and the development of work products. The term “collaborative control” originated from work developed in the late 90’s and early 2000 by Fong, Thorpe, and Baur (1999). It is important to note that according to Fong et al. in order for robots to function in collaborative control, they must be self-reliant, aware, and adaptive. In literature, the adjective “adaptive” is not always shown but is noted in the official sense as it is an important element of collaborative control. The adaptation of traditional applications of control theory in teleoperations sought initially to reduce the sovereignty of “humans as controllers/robots as tools” and had humans and robots working as peers, collaborating to perform tasks and to achieve common goals. Early implementations of adaptive collaborative control centered on vehicle teleoperation. Recent uses of adaptive collaborative control cover training, analysis, and engineering applications in teleoperations between humans and multiple robots, multiple robots collaborating among themselves, unmanned vehicle control, and fault tolerant controller design.Like traditional control methodologies, adaptive collaborative control takes inputs into the system and regulates the output based on a predefined set of rules. The difference is that those rules or constraints only apply to the higher-level strategy (goals and tasks) set by humans. Lower tactical level decisions are more adaptive, flexible, and accommodating to varying levels of autonomy, interaction and agent (human and/or robotic) capabilities. Models under this methodology may query sources in the event there is some uncertainty in a task that affects the overarching strategy. That interaction will produce an alternative course of action if it provides more certainty in support of the overarching strategy. If not or there is no response, the model will continue performing as originally anticipated.Several important considerations are necessary for the implementation of adaptive collaborative control for simulation. As discussed earlier, data is provided from multiple collaborators to perform necessary tasks. This basic function requires data fusion on behalf of the model and potentially a need to set a prioritization scheme for handling continuous streaming of recommendations. The degree of autonomy of the robot in the case of human-robot interaction and weighting of decisional authority in robot-robot interaction are important for the control architecture. The design of interfaces is an important human system integration consideration that must be addressed. Due to the inherent varied interpretational scheme in humans, it becomes an important design factor to ensure the robot(s) are correctly conveying its message when interacting with humans.
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