Harry Potter's Marauder's Map: Localizing and Tracking Multiple Persons-of-Interest by Nonnegative Discretization

Shoou-I Yu, Yi Yang, Alexander Hauptmann
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引用次数: 84

Abstract

A device just like Harry Potter's Marauder's Map, which pinpoints the location of each person-of-interest at all times, provides invaluable information for analysis of surveillance videos. To make this device real, a system would be required to perform robust person localization and tracking in real world surveillance scenarios, especially for complex indoor environments with many walls causing occlusion and long corridors with sparse surveillance camera coverage. We propose a tracking-by-detection approach with nonnegative discretization to tackle this problem. Given a set of person detection outputs, our framework takes advantage of all important cues such as color, person detection, face recognition and non-background information to perform tracking. Local learning approaches are used to uncover the manifold structure in the appearance space with spatio-temporal constraints. Nonnegative discretization is used to enforce the mutual exclusion constraint, which guarantees a person detection output to only belong to exactly one individual. Experiments show that our algorithm performs robust localization and tracking of persons-of-interest not only in outdoor scenes, but also in a complex indoor real-world nursing home environment.
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哈利波特的活点地图:用非负离散化方法定位和跟踪多个感兴趣的人
像《哈利波特》里的活点地图一样的设备,可以随时精确定位每个嫌疑人的位置,为分析监控视频提供宝贵的信息。为了使该设备成为现实,需要一个系统在现实世界的监视场景中执行强大的人员定位和跟踪,特别是对于具有许多墙壁造成遮挡的复杂室内环境和监视摄像机覆盖稀疏的长走廊。我们提出了一种非负离散化的检测跟踪方法来解决这个问题。给定一组人员检测输出,我们的框架利用所有重要的线索,如颜色、人员检测、人脸识别和非背景信息来执行跟踪。局部学习方法用于在时空约束下揭示外观空间中的流形结构。采用非负离散化来加强互斥约束,保证一个人检测输出只属于一个人。实验表明,我们的算法不仅在室外场景中,而且在复杂的室内现实养老院环境中,都能对感兴趣的人进行鲁棒的定位和跟踪。
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