Learning robots : 6th European Workshop, EWLR--6, Brighton, England, August 1-2, 1997 : proceedings
著者
書誌事項
Learning robots : 6th European Workshop, EWLR--6, Brighton, England, August 1-2, 1997 : proceedings
(Lecture notes in computer science, 1545 . Lecture notes in artificial intelligence)
Springer, c1998
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注記
"EWLR-6 was held in conjunction with ECAL'97."--pref.
Includes bibliographical references
内容説明・目次
内容説明
Robot learning is a broad and interdisciplinary area. This holds with regard to the basic interests and the scienti c background of the researchers involved, as well as with regard to the techniques and approaches used. The interests that motivate the researchers in this eld range from fundamental research issues, such as how to constructively understand intelligence, to purely application o- ented work, such as the exploitation of learning techniques for industrial robotics. Given this broad scope of interests, it is not surprising that, although AI and robotics are usually the core of the robot learning eld, disciplines like cog- tive science, mathematics, social sciences, neuroscience, biology, and electrical engineering have also begun to play a role in it. In this way, its interdisciplinary character is more than a mere fashion, and leads to a productive exchange of ideas. One of the aims of EWLR-6 was to foster this exchange of ideas and to f- ther boost contacts between the di erent scienti c areas involved in learning robots. EWLR is, traditionally, a \European Workshop on Learning Robots". Nevertheless, the organizers of EWLR-6 decided to open up the workshop to non-European research as well, and included in the program committee we- known non-European researchers. This strategy proved to be successful since there was a strong participation in the workshop from researchers outside - rope, especially from Japan, which provided new ideas and lead to new contacts.
目次
The construction and acquisition of visual categories.- Q-Learning with Adaptive State Space Construction.- Modular Reinforcement Learning: An Application to a Real Robot Task.- Analysis and Design of Robot's Behavior: Towards a Methodology.- Vision Based State Space Construction for Learning Mobile Robots in Multi Agent Environments.- Transmitting Communication Skills Through Imitation in Autonomous Robots.- Continual Robot Learning with Constructive Neural Networks.- Robot Learning and Self-Sufficiency: What the energy-level can tell us about a robot's performance.- Perceptual grounding in robots.- A Learning Mobile Robot: Theory, Simulation and Practice.- Learning Complex Robot Behaviours by Evolutionary Computing with Task Decomposition.- Robot Learning using Gate-Level Evolvable Hardware.
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