Robust pedestrian tracking using improved tracking-learning-detection algorithm

Ritika Verma, I. Sreedevi
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Abstract

Manual analysis of pedestrians for surveillance of large crowds in real time applications is not practical. Tracking-Learning-Detection suggested by Kalal, Mikolajczyk and Matas [1] is one of the most prominent automatic object tracking system. TLD can track single object and can handle occlusion and appearance change but it suffers from limitations. In this paper, tracking of multiple objects and estimation of their trajectory is suggested using improved TLD. Feature tracking is suggested in place of grid based tracking to solve the limitation of tracking during out of plane rotation. This also leads to optimization of algorithm. Proposed algorithm also achieves auto-initialization with detection of pedestrians in the first frame which makes it suitable for real time pedestrian tracking.
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基于改进跟踪-学习-检测算法的鲁棒行人跟踪
人工分析行人以实时监控大量人群的应用是不现实的。Kalal, Mikolajczyk和Matas[1]提出的跟踪-学习-检测是最突出的自动目标跟踪系统之一。TLD可以跟踪单个物体,可以处理遮挡和外观变化,但存在局限性。本文提出了一种基于改进TLD的多目标跟踪和轨迹估计方法。为了解决非平面旋转时跟踪的局限性,提出用特征跟踪代替网格跟踪。这也导致了算法的优化。该算法在第一帧检测行人的情况下实现了自动初始化,适合于实时行人跟踪。
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