Detecting, tracking and predicting human motion inside an industrial robotic cell using a map-based particle filtering strategy

M. Ragaglia, L. Bascetta, P. Rocco
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引用次数: 6

Abstract

In order to enable safe and efficient human-robot interaction it is beneficial for the robot control system to be able not only to detect the presence and track the motion of human workers entering the robotic cell, but also to predict in the least possible time their trajectory and the area they are heading to. This paper proposes an innovative particle filtering strategy addressing at the same time the problems of Human Detection and Tracking and Intention Estimation, based on low-cost commercial RGB surveillance cameras, a map of the robotic cell environment, and a probabilistic description of the trajectories followed by human workers inside the cell. Results of several validation experiments are presented.
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使用基于地图的粒子滤波策略检测、跟踪和预测工业机器人细胞内的人体运动
为了实现安全高效的人机交互,机器人控制系统不仅要能够检测和跟踪进入机器人单元的人类工人的运动,而且要能够在尽可能短的时间内预测他们的轨迹和他们要去的区域。本文提出了一种创新的粒子滤波策略,同时解决了人类检测和跟踪以及意图估计问题,该策略基于低成本商用RGB监控摄像机,机器人细胞环境地图以及细胞内人类工作人员遵循的轨迹的概率描述。给出了几个验证实验的结果。
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