首页> 外文期刊>Advanced Robotics: The International Journal of the Robotics Society of Japan >Human tracking system based on adaptive multi-feature mean-shift for robot under the double-layer locating mechanism
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Human tracking system based on adaptive multi-feature mean-shift for robot under the double-layer locating mechanism

机译:双层定位机制下基于自适应多特征均值漂移的机器人人体跟踪系统

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摘要

Human tracking has been a challenging task for robot in the past decades. In this paper, to realize the human following in a cluttered environment, a human tracking system based on adaptive multi-feature mean-shift (AMF-MS) under the double-layer locating mechanism (DLLM) is proposed to solve the problem of distinguishing target, occlusion, and quick turning. The DLLM, considering the course location processing and fine location processing, is designed to estimate the person's position using the fusion of heterogeneous data. As an ID tag attached on target can be detected by RF antennas, the course locating method can track the target easily and quickly. The Bayes rule is introduced to calculate the probability where the tag exists due to the instability of RF signals. In the fine locating step, the AMF-MS is proposed because it can reduce computational load and represent target by multi-feature histogram function. Meanwhile, we combine extended Kalman filter and AMF-MS to overcome MS's inability of occlusion. To control the robot following the target person precisely, an intelligent gear shift strategy based on fuzzy control is implemented by analyzing the robot structure. Experiments demonstrate that the proposed approach is robust to handle complex tracking conditions, and show the system has an optimum performance.
机译:在过去的几十年中,人类跟踪一直是机器人的一项艰巨任务。为了在混乱的环境中实现人的跟随,提出了一种在双层定位机制(DLLM)下基于自适应多特征均值漂移(AMF-MS)的人跟踪系统,以解决区分问题。目标,遮挡和快速转向。 DLLM考虑了路线定位处理和精细定位处理,旨在使用异构数据的融合来估计人员的位置。由于可以通过射频天线检测附着在目标上的ID标签,因此路线定位方法可以轻松,快速地跟踪目标。引入贝叶斯规则以计算由于RF信号的不稳定性而导致标签存在的概率。在精细定位步骤中,提出了AMF-MS,因为它可以减少计算量并通过多特征直方图函数表示目标。同时,我们将扩展的卡尔曼滤波器和AMF-MS结合起来,克服了MS的遮挡能力。为了精确地控制机器人跟随目标人,通过分析机器人的结构,实现了基于模糊控制的智能换挡策略。实验表明,该方法具有较强的鲁棒性,可以处理复杂的跟踪条件,并表明该系统具有最佳性能。

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