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Learning grasping affordances from local visual descriptors

机译:从本地视觉描述符中学习掌握能力

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In this paper we study the learning of affordances through self-experimentation. We study the learning of local visual descriptors that anticipate the success of a given action executed upon an object. Consider, for instance, the case of grasping. Although graspable is a property of the whole object, the grasp action will only succeed if applied in the right part of the object. We propose an algorithm to learn local visual descriptors of good grasping points based on a set of trials performed by the robot. The method estimates the probability of a successful action (grasp) based on simple local features. Experimental results on a humanoid robot illustrate how our method is able to learn descriptors of good grasping points and to generalize to novel objects based on prior experience.
机译:在本文中,我们研究了通过自我实验来学习负担能力的方法。我们研究了局部视觉描述符的学习,这些视觉描述符预测了在对象上执行的给定动作的成功。考虑例如抓握的情况。尽管可抓握是整个对象的属性,但抓握动作只有在对象的正确部分中应用才会成功。我们提出了一种算法,可以根据机器人执行的一组试验来学习良好抓取点的局部视觉描述符。该方法基于简单的局部特征估计成功行动(抓紧)的可能性。人形机器人的实验结果说明了我们的方法如何能够学习到具有良好抓点的描述符,并根据先前的经验将其推广到新颖的物体。

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