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Predicting Arm Movements A Multi-Variate LSTM Based Approach for Human-Robot Hand Clapping Games

机译:预测臂移动基于多变化的基于LSTM的人机手持游戏方法

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Predicting arm movements is a key issue in physical human robots interactions. It allows robots to prepare for action and meet human requirements and needs on time. Different to human action recognition, the prediction of human movements relies on few samples, namely the first ones. In this paper, we explore the use of LSTM (Long Short Term Memory) networks in deriving the final position and the time of the human hand when performing a high five game with robots. For such a context, the synchrony of human and robot movements should be achieved at early stages of the human to meet the constraints of both real-time robot control and the realism of the robot movement. The results we obtained are very encouraging and opening new questions as well. Our solution predicts acceptable final position and contact time regardless the morphology of people and their positioning.
机译:预测ARM运动是物理人体机器人交互的关键问题。它允许机器人准备行动并满足人类的需求和需求按时。与人类行动识别不同,人类运动的预测依赖于少数样品,即第一个样品。在本文中,我们探讨了LSTM(长期内存)网络在使用机器人执行高五场比赛时导出了人手的最终位置和时间。对于这种背景,应在人类的早期阶段实现人体和机器人运动的同步,以满足实时机器人控制和机器人运动的现实的限制。我们获得的结果非常令人鼓舞和开辟新问题。我们的解决方案预测可接受的最终位置并接触时间,无论人物的形态及其定位。

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