Toward interactive learning of object categories by a robot: A case study with container and non-container objects

Shane Griffith, J. Sinapov, Matthew Miller, A. Stoytchev
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引用次数: 45

Abstract

This paper proposes an interactive approach to object categorization that is consistent with the principle that a robot's object representations should be grounded in its sensorimotor experience. The proposed approach allows a robot to: 1) form object categories based on the movement patterns observed during its interaction with objects, and 2) learn a perceptual model to generalize object category knowledge to novel objects. The framework was tested on a container/non-container categorization task. The robot successfully separated the two object classes after performing a sequence of interactive trials. The robot used the separation to learn a perceptual model of containers, which, which, in turn, was used to categorize novel objects as containers or non-containers.
机器人对对象类别的交互式学习:容器和非容器对象的案例研究
本文提出了一种交互式的对象分类方法,该方法与机器人的对象表征应该基于其感觉运动经验的原则相一致。该方法允许机器人:1)根据与物体交互过程中观察到的运动模式形成物体类别;2)学习感知模型,将物体类别知识推广到新物体。该框架在容器/非容器分类任务上进行了测试。在进行了一系列互动试验后,机器人成功地将两类物体分开。机器人利用这种分离来学习容器的感知模型,该模型反过来用于将新物体分类为容器或非容器。
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