一种用于智能体运动生成的多时间尺度递归神经网络快速训练算法

Zhibin Yu, R. Mallipeddi, Minho Lee
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引用次数: 1

摘要

动作理解和动作再生是人机交互的两个基本方面。代理的一个重要功能是代表人的活动。为了更好地与人类互动,机器人代理不仅要按照人类的命令去做一些事情,而且要能够理解甚至扮演一些动作。多时间尺度递归神经网络(MTRNN)被认为是机器人动作生成的有效工具。在我们之前的工作中,我们扩展了MTRNN的概念,并开发了用于运动识别的监督MTRNN。本文采用条件限制玻尔兹曼机(CRBM)对有监督MTRNN进行初始化,提高了有监督MTRNN的训练速度。实验结果表明,该方法可以在不损失太多性能的情况下大大提高训练速度。
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A Fast Training Algorithm of Multiple-Timescale Recurrent Neural Network for Agent Motion Generation
Motion understanding and regeneration are two basic aspects of human-agent interaction. One important function of agents is to represent human's activities. For better interaction with human, robot agents should not only do something following human's order, but also be able to understand or even play some actions. Multiple Timescale Recurrent Neural Networks (MTRNN) is believed to be an efficient tool for robots action generation. In our previous work, we extended the concept of MTRNN and developed Supervised MTRNN for motion recognition. In this paper, we use Conditional Restricted Boltzmann Machine (CRBM) to initialize Supervised MTRNN and accelerate the training speed of Supervised MTRNN. Experiment results show that our method can greatly increase the training speed without losing much performance.
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