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Motion Generation of Humanoid Robot based on Polynomials Generated by Recurrent Neural Network

机译:基于经常性神经网络产生的多项式的人形机器人运动产生

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Humanoid robots are expected to have a variety of motions enabling them to interact with people on a sophisticated level. Making a program for generating several stable motions using standard programming languages such as C, is not only time consuming but is also difficult to understand and modify. For this, a suitable recurrent neural network language (RNN) inspired by neurobiology has been developed. In this paper, a simple method of motion generation based on polynomials generated by RNN is presented. All motions are generated using a basic RNN circuit of a first order polynomial. This method easily enables a humanoid robot to execute complex motions. Furthermore, feedback controllers can be easily inserted in the RNN circuit of a motion with any desired timing. Both rhythmic and non-rhythmic motion can be generated based on the same strategy. The effectiveness of the proposed method is verified by experimental results.
机译:预计人形机器人有多种动作使他们能够在复杂的水平上与人们互动。制作用于使用如C等标准编程语言生成几个稳定运动的程序,不仅耗时,而且难以理解和修改。为此,已经开发出一种由神经生物学的启发的合适的复发性神经网络语言(RNN)。本文介绍了基于RNN产生的多项式的运动生成简单方法。所有运动都是使用一阶多项式的基本RNN电路产生的。该方法容易使人形机器人能够执行复杂的运动。此外,反馈控制器可以容易地插入具有任何所需定时的运动的RNN电路中。可以基于相同的策略生成节奏和非节奏运动。通过实验结果验证了所提出的方法的有效性。

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