Detecting Features of Tools, Objects, and Actions from Effects in a Robot using Deep Learning

Namiko Saito, Kitae Kim, Shingo Murata, T. Ogata, S. Sugano
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引用次数: 3

Abstract

We propose a tool-use model that can detect the features of tools, target objects, and actions from the provided effects of object manipulation. We construct a model that enables robots to manipulate objects with tools, using infant learning as a concept. To realize this, we train sensory-motor data recorded during a tool-use task performed by a robot with deep learning. Experiments include four factors: (1) tools, (2) objects, (3) actions, and (4) effects, which the model considers simultaneously. For evaluation, the robot generates predicted images and motions given information of the effects of using unknown tools and objects. We confirm that the robot is capable of detecting features of tools, objects, and actions by learning the effects and executing the task.
利用深度学习从机器人的效果中检测工具、对象和动作的特征
我们提出了一个工具使用模型,该模型可以从对象操作提供的效果中检测工具、目标对象和操作的特征。我们构建了一个模型,使机器人能够使用工具操作物体,使用婴儿学习作为一个概念。为了实现这一点,我们用深度学习训练机器人在工具使用任务中记录的感觉运动数据。实验包括四个因素:(1)工具,(2)对象,(3)动作,(4)效果,模型同时考虑这些因素。为了进行评估,机器人在给定使用未知工具和物体的效果信息的情况下生成预测的图像和运动。我们确认机器人能够通过学习效果和执行任务来检测工具、物体和动作的特征。
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