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Autonomous Motion Generation Based on Reliable Predictability

机译:基于可靠可预测性的自主运动生成

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摘要

Predictability is an important factor for generating object manipulation motions. In this paper, the authors present a technique to generate autonomous object pushing motions based on object dynamics consistency, which is tightly connected to reliable predictability. The technique first creates an internal model of the robot and object dynamics using Recurrent Neural Network with Parametric Bias, based on transitions of extracted object features and generated robot motions acquired during active sensing experiences with objects. Next, the technique searches through the model for the most consistent object dynamics and corresponding robot motion through a consistency evaluation function using Steepest Descent Method. Finally, the initial static image of the object is linked to the acquired robot motion using a hierarchical neural network. The authors have conducted a motion generation experiment using pushing motions with cylindrical objects for evaluation of the method. The experiment has shown that the method has generalized its ability to adapt to object postures for generating consistent rolling motions.
机译:可预测性是生成对象操纵运动的重要因素。在本文中,作者提出了一种基于对象动力学一致性来生成自主对象推动运动的技术,该技术与可靠的可预测性紧密相关。该技术首先使用带参数偏差的递归神经网络创建机器人和物体动力学的内部模型,该模型基于提取的物体特征的转换以及在主动感知物体过程中获得的生成的机器人运动。接下来,该技术通过使用最速下降法的一致性评估功能在模型中搜索最一致的对象动力学和相应的机器人运动。最后,使用层次神经网络将对象的初始静态图像链接到获取的机器人运动。作者已经进行了使用圆柱物体推动运动的运动产生实验,以评估该方法。实验表明,该方法具有广泛的适应对象姿势的能力,可以产生一致的滚动运动。

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