基于最近邻的视觉目标跟踪的有效实现

K. Choeychuen, P. Kumhom, K. Chamnongthai
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引用次数: 16

摘要

独立的视觉目标跟踪不如数据关联的视觉目标跟踪可靠。本文提出了一种基于最近邻(NN)数据关联的跟踪方法,与多假设跟踪(MHT)或联合概率数据关联滤波器(JPDAF)相比,该方法的计算量更小,但当目标数量增加时,可靠性较低。通过选择合适的可视化对象模型,可以提高这种可靠性。为了在处理非刚性物体的同时获得较低的计算量,我们提出了一种将累积物体区域阈值与物体边界框相结合的物体模型。关联矩阵的元素是距离函数,该距离函数是由距离函数的对象模型混合而成。距离函数目标模型的组合是确定目标对应状态的重要机制,目标对应状态可分为更新航迹、缺失航迹、新航迹、分组航迹、合并航迹和复杂航迹六类。利用航迹寿命准则对缺失航迹进行求解,对分组航迹、合并航迹和复杂航迹进行求解。在监控图像序列对应问题的各种情况下,实验结果都得到了正确的证明
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An Efficient Implementation of the Nearest Neighbor Based Visual Objects Tracking
An independent visual objects tracking is less reliable than the data association of visual objects tracking. This paper describes a tracking method based on the nearest neighbor (NN) data association, which serves lower computational than do the multiple hypothesis tracking (MHT) or the joint probabilistic data association filter (JPDAF) but gives low reliability, if the number of targets is increased. This reliability can be increased by selecting appropriate visual object model. To obtain low computation while capable of handling non-rigid object, we propose an object model which combines the threshold of accumulated object region and the object bounding box. The elements of the association matrix are the distance function that is proposed as a mixture of object models of distance function. The combinations of object models of distance function are important mechanism for determining appropriate state of object correspondence which can be divided into six groups: updated track, missing track, newly track, grouped track, merged track and complex track. The missing track is solved by the track life time criterion while the grouping, the merged and the complex track are resolved by using the proposed NN algorithm again. The experimental results are correctly shown on various situations of correspondence problem from surveillance image sequences
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