Tracking pedestrians with incremental learned intensity and contour templates for PTZ camera visual surveillance

Yi Xie, Mingtao Pei, Guanqun Yu, Xi Song, Yunde Jia
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引用次数: 4

Abstract

This paper presents a novel particle-based pedestrian tracking algorithm for PTZ visual surveillance. Most of the state-of-art particle-based tracking algorithms are challenged due to lacking of a reliable moving object detection and drastic scale along with perspective shift of the target. Therefore, pure intensity based algorithms usually miss the target gradually without other features for correcting target location. Our method learns and maintains a contour template of the target besides intensity. Taking into account both the evolution and sudden change of the pedestrian contour, the proposed tracking algorithm maintains several sets of profiles from different perspectives and evolves them incrementally. The effectiveness of our tracking algorithm with extra contour measurement is tested over several surveillance records captured from PTZ camera and estimates the location more robustly than other cutting edge tracking algorithms compared in our experiments.
基于增量学习强度和轮廓模板的PTZ摄像机视觉监控行人跟踪
提出了一种新的基于粒子的PTZ视觉监控行人跟踪算法。目前大多数基于粒子的跟踪算法由于缺乏可靠的运动目标检测和随着目标视角变化的巨大尺度而受到挑战。因此,单纯基于强度的算法通常会逐渐错过目标,没有其他特征来校正目标位置。该方法除了学习目标的强度外,还学习和维护目标的轮廓模板。该算法同时考虑了行人轮廓的演化和突变,从不同的角度维护多组轮廓,并对其进行增量演化。我们的跟踪算法具有额外的轮廓测量的有效性,通过从PTZ摄像机捕获的几个监视记录进行了测试,并且比我们实验中比较的其他尖端跟踪算法更稳健地估计了位置。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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