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Multi-cue-Based Crowd Segmentation in Stereo Visio

机译:立体视觉中基于多提示的人群分割

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摘要

People counting and human detection have always been important objectives in visual surveillance. With the decrease in the cost of stereo cameras, they can potentially be used to develop new algorithms and achieve better accuracy. This paper introduces a multi-cue-based method for individual person segmentation in stereo vision. Shape cues inside the crowd are explored with a block-based Implicit Shape Model. Depth cues are obtained from the disparity values of some foreground blobs, which are calculated concurrently during crowd segmentation. Crowd segmentation is therefore achieved with evidences from both shape and depth cues. The methods were evaluated on two video sequences. The results show that the segmentation performance has been improved when depth cues are considered.
机译:计数和人工检测一直是视觉监控的重要目标。随着立体摄像机成本的降低,它们有可能被用于开发新算法并获得更高的精度。本文介绍了一种基于多线索的立体视觉个人分割方法。使用基于块的隐式形状模型探索人群内部的形状提示。从一些前景斑点的视差值获得深度提示,这些前景斑点在人群分割期间同时计算。因此,可以通过形状和深度提示的证据来实现人群分割。在两个视频序列上评估了这些方法。结果表明,在考虑深度提示的情况下,分割性能得到了改善。

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