通过感知和操纵发现启示

R. García, Pierre Luce-Vayrac, R. Chatila
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引用次数: 7

摘要

仅仅将感知视为一个观察过程,正是迄今为止机器人感知方法无法提供一般场景理解能力的原因。神经科学的相关研究表明,感知和行动之间有很强的关系。我们认为,考虑感知与行动的关系,需要根据主体自身的潜在能力来解释场景。在本文中,我们提出了一种贝叶斯方法,通过动作和观察能力之间的相互作用来学习感觉运动表征。我们将提供性的概念表示为三个元素之间的概率关系:对象、动作和效果。在一个真实的机器人平台上,以一种无监督的方式进行了启示发现实验,假设了有限的先天能力。结果显示了在一个共同框架中连接这三个元素的依赖关系:可视性。越来越多的相互作用和观察结果形成了一个贝叶斯网络,它捕捉了它们之间的关系。学习到的表示可以用于预测任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discovering affordances through perception and manipulation
Considering perception as an observation process only is the very reason for which robotic perception methods are to date unable to provide a general capacity of scene understanding. Related work in neuroscience has shown that there is a strong relationship between perception and action. We believe that considering perception in relation to action requires to interpret the scene in terms of the agent's own potential capabilities. In this paper, we propose a Bayesian approach for learning sensorimotor representations through the interaction between action and observation capabilities. We represent the notion of affordance as a probabilistic relation between three elements: objects, actions and effects. Experiments for affordances discovery were performed on a real robotic platform in an unsupervised way assuming a limited set of innate capabilities. Results show dependency relations that connect the three elements in a common frame: affordances. The increasing number of interactions and observations results in a Bayesian network that captures the relationships between them. The learned representation can be used for prediction tasks.
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