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Head-shoulder detection using joint HOG features for people counting and video surveillance in library

机译:使用HOG联合功能进行头肩检测,用于图书馆人数统计和视频监控

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Pedestrian detection is an important problem in video surveillance. While pedestrians often have diverse postures and mutual occlusion which make the detection quite difficult, their head-shoulder portions are relatively stable. Thus we choose to use head-shoulder outline features of a pedestrian for detecting. First, we apply a hierarchical classification method using Haar features and HOG features to head-shoulder location detection. Second, we define a combined feature named Joint HOG based on the symmetry of head-shoulder portion. Third, we filter out most negative samples by using the Haar classifier. Finally, we execute an elaborate HOG verification and thus obtain the head-shoulder target box expected. Experimental results show that our method achieved a real-time processing accuracy rate of nearly 90%, arguing that it is applicable to people counting and video surveillance in library.
机译:行人检测是视频监控中的重要问题。尽管行人经常有各种各样的姿势和相互遮挡,这使得检测非常困难,但他们的头肩部分却相对稳定。因此,我们选择使用行人的头肩轮廓特征进行检测。首先,我们将使用Haar特征和HOG特征的分层分类方法应用于头肩位置检测。其次,我们基于头肩部分的对称性定义了一个名为“联合HOG”的组合特征。第三,我们使用Haar分类器过滤掉大多数负面样本。最后,我们执行详尽的HOG验证,从而获得预期的头肩目标箱。实验结果表明,该方法适用于图书馆人数统计和视频监控,可达到近90%的实时处理准确率。

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