移动服务和社交机器人的鲁棒多人检测和跟踪。

Liyuan Li, Shuicheng Yan, Xinguo Yu, Yeow Kee Tan, Haizhou Li
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引用次数: 32

摘要

本文提出了一种集成多种视觉模型的高效系统,用于公共环境下移动服务和社交机器人的鲁棒多人检测和跟踪。其核心技术是一种基于极大似然的算法,该算法结合了均值漂移跟踪中的多模型检测。首先,定义了一个综合检测和局部外观相似度的似然概率。然后,在机器学习框架下推导了一种类似于期望最大化(EM)的均值偏移算法。在每次迭代中,e步估计与检测的关联,m步根据ML标准定位新位置。为了对复杂拥挤场景下的多人跟踪具有鲁棒性,提出了一种改进的序贯均值漂移跟踪策略。在这种策略下,人类物体按照其优先级顺序被跟踪。为了平衡实时性能的效率和鲁棒性,在每个阶段,从优先级顺序列表中选择前两个对象进行测试,并选择得分较高的对象。该方法已在实际服务机器人和社交机器人上成功实现。视觉系统集成了基于立体和直方图的基于梯度的人体检测、遮挡推理和顺序均值偏移跟踪。通过实例验证了该系统在移动机器人多人跟踪中的优越性和鲁棒性。对多人跟踪的性能进行了定量评价。实验结果表明,该方法取得了显著的改进效果。
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Robust multiperson detection and tracking for mobile service and social robots.

This paper proposes an efficient system which integrates multiple vision models for robust multiperson detection and tracking for mobile service and social robots in public environments. The core technique is a novel maximum likelihood (ML)-based algorithm which combines the multimodel detections in mean-shift tracking. First, a likelihood probability which integrates detections and similarity to local appearance is defined. Then, an expectation-maximization (EM)-like mean-shift algorithm is derived under the ML framework. In each iteration, the E-step estimates the associations to the detections, and the M-step locates the new position according to the ML criterion. To be robust to the complex crowded scenarios for multiperson tracking, an improved sequential strategy to perform the mean-shift tracking is proposed. Under this strategy, human objects are tracked sequentially according to their priority order. To balance the efficiency and robustness for real-time performance, at each stage, the first two objects from the list of the priority order are tested, and the one with the higher score is selected. The proposed method has been successfully implemented on real-world service and social robots. The vision system integrates stereo-based and histograms-of-oriented-gradients-based human detections, occlusion reasoning, and sequential mean-shift tracking. Various examples to show the advantages and robustness of the proposed system for multiperson tracking from mobile robots are presented. Quantitative evaluations on the performance of multiperson tracking are also performed. Experimental results indicate that significant improvements have been achieved by using the proposed method.

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