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Motion generation based on reliable predictability using self-organized object features

机译:使用自组织对象特征基于可靠的可预测性进行运动生成

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Predictability is an important factor for determining robot motions. This paper presents a model to generate robot motions based on reliable predictability evaluated through a dynamics learning model which self-organizes object features. The model is composed of a dynamics learning module, namely Recurrent Neural Network with Parametric Bias (RNNPB), and a hierarchical neural network as a feature extraction module. The model inputs raw object images and robot motions. Through bi-directional training of the two models, object features which describe the object motion are self-organized in the output of the hierarchical neural network, which is linked to the input of RNNPB. After training, the model searches for the robot motion with high reliable predictability of object motion. Experiments were performed with the robot's pushing motion with a variety of objects to generate sliding, falling over, bouncing, and rolling motions. For objects with single motion possibility, the robot tended to generate motions that induce the object motion. For objects with two motion possibilities, the robot evenly generated motions that induce the two object motions.
机译:可预测性是确定机器人运动的重要因素。本文提出了一个模型,该模型基于通过可自组织对象特征的动力学学习模型评估的可靠可预测性来生成机器人运动。该模型由动力学学习模块(即带有参数偏差的递归神经网络(RNNPB))和分层神经网络作为特征提取模块组成。该模型输入原始对象图像和机器人运动。通过对两个模型的双向训练,描述对象运动的对象特征在层次神经网络的输出中是自组织的,该神经网络链接到RNNPB的输入。训练后,该模型搜索具有高度可靠的对象运动可预测性的机器人运动。对机器人的各种物体的推动运动进行了实验,以产生滑动,跌倒,弹跳和滚动运动。对于具有单一运动可能性的物体,机器人倾向于产生引起物体运动的运动。对于具有两种运动可能性的物体,机器人会均匀地产生引起两种物体运动的运动。

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