Control of human cooperative robots based on stochastic prediction of human motion

S. Tadokoro, T. Takebe, Y. Ishikawa, T. Takamori
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引用次数: 7

Abstract

The authors propose a control model for human cooperative robots. In this model, the future human position is predicted on the basis of the measured human motion by a human recognition system. Robot trajectories are modified to improve safety which is computed using the prediction result. In this paper, a prediction method of stochastic process is adopted for the control model. In a room which is divided into square cells, a human state variable (cell number, direction and speed of motion) is stochastically made transitions as a Markov process. Simulation was performed for a room where a man and a robot are working together. The results demonstrated that the stochastic prediction is very effective for planning robot trajectories against danger, by which the robot can predict danger much earlier than by using the deterministic prediction method.<>
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基于人体运动随机预测的人机协作机器人控制
提出了一种人类协作机器人的控制模型。在该模型中,人体识别系统根据测量到的人体运动来预测人体未来的位置。根据预测结果对机器人轨迹进行修正以提高安全性。本文采用随机过程的预测方法对控制模型进行预测。在一个被分成正方形单元的房间里,一个人类状态变量(单元数、方向和运动速度)作为一个马尔可夫过程被随机转换。模拟是在一个人和机器人一起工作的房间里进行的。结果表明,随机预测方法对于机器人的危险轨迹规划是非常有效的,可以比确定性预测方法更早地预测危险。
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