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People counting by learning their appearance in a multi-view camera environment

机译:通过在多视图相机环境中学习外观来计数的人

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We present a people counting system that, based on the information gathered by multiple cameras, is able to tackle occlusions and lack of visibility that are typical in crowded and cluttered scenes. In our method, evidence of the foreground likelihood in each available view is obtained through a bio-inspired mechanism of self-organizing background subtraction, that is robust against well known foreground detection challenges and is able to detect both moving and stationary foreground objects. This information is gathered into a synergistic framework, that exploits the homography associated to each scene view and the scene ground plane, thus allowing to reconstruct people feet positions in a single "feet map" image. Finally, people counting is obtained by a k-NN classification, based on learning the count estimates from the feet maps, supported by a tracking mechanism that keeps track of people movements and of their identities along time, also enabling tolerance to occasional misdetections. Experimental results with detailed qualitative and quantitative analysis and comparisons with state-of-the-art methods are provided on publicly available benchmark datasets with different crowd densities and environmental conditions.
机译:我们提供了一个人员计数系统,该系统基于多个摄像机收集的信息,能够解决拥挤和混乱场景中常见的遮挡和缺乏可见性的情况。在我们的方法中,通过生物组织的自组织背景减影机制获得了每个可用视图中前景可能性的证据,该机制可应对众所周知的前景检测挑战,并且能够检测移动和静止的前景物体。该信息被收集到一个协同框架中,该框架利用与每个场景视图和场景地平面相关的单应性,从而允许在单个“脚地图”图像中重建人脚的位置。最后,在学习跟踪图的基础上,通过k-NN分类获得人员计数,并通过跟踪机制来支持,该跟踪机制可跟踪人员随时间的移动及其身份,还可以容忍偶然的误检。在具有不同人群密度和环境条件的可公开获得的基准数据集上,提供了详细定性和定量分析以及与最新方法进行比较的实验结果。

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