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Human detection in crowded scenes

机译:在拥挤场景中的人为检测

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摘要

In this paper, our focus is to segment the foreground area for human detection. It is assumed that the foreground region has been detected. Accurate foreground contours are not required. The developed approach adopts a modified ISM (Implicit Shape Model) to collect some typical local patches of human being and their location information. Individuals are detected by grouping some local patches in the foreground area. The method can get good results in crowded scenes. Some examples based on CAVIAR dataset have been shown. A main contribution of the paper is that ISM model and joint occlusion analysis are combined for individual segmentation. There are mainly two advantages: First, with more sufficient information inside the foreground region, even the individuals inside a dense area can also be handled. Secondly, the method does not require an accurate foreground contour. A rough foreground area can be easily obtained in most situations.
机译:在本文中,我们的重点是对前景区域进行分割以进行人体检测。假定已经检测到前景区域。不需要精确的前景轮廓。开发的方法采用改进的ISM(隐身形状模型)来收集一些典型的人类局部斑块及其位置信息。通过将前景区域中的一些局部色标分组来检测个体。该方法在拥挤的场景中可以获得良好的效果。展示了一些基于CAVIAR数据集的示例。本文的主要贡献是将ISM模型和联合遮挡分析相结合进行了个体分割。主要有两个优点:首先,在前景区域内有足够的信息,即使在密集区域内的个人也可以被处理。其次,该方法不需要精确的前景轮廓。在大多数情况下,很容易获得粗糙的前景区域。

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