热反射全向视觉中的人体跟踪

Yazhe Tang, Youfu Li, Tianxiang Bai, Xiaolong Zhou, Zhongwei Li
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引用次数: 15

摘要

我们提出了一种新型的热反射全向(TCO)视觉人体跟踪系统,能够实现全天候、宽视场条件下的监控。相比之下,以往的人体跟踪系统主要侧重于传统成像系统中的跟踪。本文提出的跟踪方法采用支持向量机(SVM)的分类后验概率来关联粒子滤波的观测似然,实现高效跟踪。然而,以往的工作只使用SVM的最终输出标签进行分类。由于没有公开的TCO视觉数据集,我们建立了一个包含TCO视频的数据集,并提取了人体样本来训练分类器并测试所提出的跟踪方法。此外,我们调整了粒子滤波的跟踪窗口分布,以适应反射全向视觉的特点,即全向图像中目标的大小取决于目标图像与反射全向图像中心的距离。最后,实验结果表明,本文提出的跟踪方法在TCO视觉跟踪系统中具有稳定、良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human tracking in thermal catadioptric omnidirectional vision
We propose to explore a novel tracking system for human tracking in thermal catadioptric omnidirectional (TCO) vision, which is able to realize the surveillance in all-weather and wide field of view conditions. In contrast, previous human tracking system mainly focuses on tracking in conventional imaging system. In this paper, the proposed tracking method adopts the classification posterior probability of Support Vector Machine (SVM) to relate the observation likelihood of particle filter for efficient tracking. However, previous works only employ the final output label of SVM for classification. Due to no existing TCO vision dataset available in public, we establish a dataset including TCO videos and extracted human samples to train the classifier and test the proposed tracking method. Moreover, we adjust tracking window distribution of particle filter to fit the characteristic of catadioptric omnidirectional vision which is the size of target in omni-image depends on the distance between target image and the center of catadioptric omnidirectional image. Finally, the experimental results show that our proposed tracking method has a stable and good performance in TCO vision tracking system.
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