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Multiple Objects Tracking and Identification Based on Sparse Representation in Surveillance Video

机译:基于稀疏表示的监控视频多目标跟踪与识别

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In the field of multiple-camera video surveillance, object tracking is attracting more and more attention. Problems such as objects' abrupt motion, occlusion and complex target structures make this field full of challenges. In the paper, a method based on particle filter and sparse representation for large-scale object tracking is proposed. At first, the features of target objects are trained, then we detect the motion region in the high resolution video, using human crowd segmentation algorithm to separate person from the crowd. After getting the region of single person, the features of the region such as color histogram and hash code would be extracted to match with trained features of target objects. According to the performance of feature matching, we find the true targeted object and its smallest rectangle area. In tracking process, discriminative Sparse Similarity Map (SSM) is used to guarantee a good performance of target tracking. Experiment results demonstrate our method can provide high accuracy and robustness.
机译:在多摄像机视频监控领域,目标跟踪越来越受到关注。物体的突然运动,遮挡和复杂的目标结构等问题使该领域充满了挑战。提出了一种基于粒子滤波和稀疏表示的大规模目标跟踪方法。首先,对目标对象的特征进行训练,然后使用人群分割算法从人群中分离出人,从而检测高分辨率视频中的运动区域。在获得单人的区域后,将提取该区域的特征(例如颜色直方图和哈希码)以与目标对象的经过训练的特征相匹配。根据特征匹配的性能,我们找到了真正的目标对象及其最小的矩形区域。在跟踪过程中,使用区分性稀疏相似度图(SSM)来保证目标跟踪的良好性能。实验结果表明,该方法可以提供较高的精度和鲁棒性。

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