Publication | Closed Access
A System for Learning Basic Object Affordances using a Self-Organizing Map
13
Citations
6
References
2008
Year
Unknown Venue
Artificial IntelligenceConcept FormationEngineeringMachine LearningObject CategorizationCognitive RoboticsMachine PerceptionIntelligent SystemsSocial SciencesPattern RecognitionRobot LearningPerception SystemTerm AffordanceSelf-organizing MapRobotics PerceptionCognitive ScienceLearning ObjectVision RoboticsDesignBasic Affordance PropertiesComputer VisionEffector Module CompetenciesObject RecognitionEye TrackingRobotics
When cognitive system encounters particular objects, it needs to know what effect each of its possible actions will have on the state of each of those objects in order to be able to make effective decisions and achieve its goals. Moreover, it should be able to generalize effectively so that when it encoun- ters novel objects, it is able to estimate what effect its actions will have on them based on its experiences with previously encountered similar objects. This idea is encapsulated by the term affordance, e.g. a ball affords being rolled to the right when pushed from the left. In this paper, we discuss the development of cognitive vision platform that uses robotic arm to interact with household objects in an attempt to learn some of their basic affordance properties. We outline the various sensor and effector module competencies that were needed to achieve this and describe an experiment that uses self-organizing map to integrate these modalities in working affordance learning system.
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