一种用于视觉监控的粒子滤波跟踪评价

J. Sherrah, B. Ristic, N. Redding
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引用次数: 8

摘要

先前已经提出了一种粒子滤波器来检测视频中的彩色物体[1]。本文将粒子滤波应用于监控视频中的人物跟踪。检测是基于自动背景建模,而不是手动生成的对象颜色模型。提出了一种在场景中跟踪物体而不是检测物体的标记方法。在pet 2004基准数据集上,对新方法与其他两种多目标跟踪器进行了系统比较。粒子滤波器由于对物体的出生和死亡过程进行了明确的建模,从而大大减少了假警报,同时保持了良好的检测率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of a Particle Filter to Track People for Visual Surveillance
Previously a particle filter has been proposed to detect colour objects in video [1]. In this work, the particle filter is adapted to track people in surveillance video. Detection is based on automated background modelling rather than a manually-generated object colour model. A labelling method is proposed that tracks objects through the scene rather than detecting them. A methodical comparison between the new method and two other multi-object trackers is presented on the PETS 2004 benchmark data set. The particle filter gives significantly fewer false alarms due to explicit modelling of the object birth and death processes, while maintaining a good detection rate.
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