Chun-Te Chu, Jenq-Neng Hwang, Kung-Ming Lan, Shen-Zheng Wang
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引用次数: 25
摘要
由于颜色偏差和视角差异,不同的相机在重叠视图下看到的一个物体的外观可能不同。在本文中,我们研究了这些问题,并提出了一种外观建模技术,以便在多个摄像机之间进行跟踪。对于单摄像机跟踪,采用了有效的集成卡尔曼滤波和多核跟踪方案。当在多个摄像机之间操纵跟踪时,我们建立了亮度传递函数(btf)来补偿摄像机视图之间的色差。利用鲁棒主成分分析(robust principal component analysis, RPCA),从跟踪过程中的重叠区域构造出BTF。此外,还可以通过应用由两个相机之间的单应性导出的切传递函数(ttf)来补偿视角差异。我们用几个真实场景的视频对所提出的方法进行了评估,得到了令人满意的结果。
Tracking across multiple cameras with overlapping views based on brightness and tangent transfer functions
The appearance of one object may be seen differently from distinct cameras with overlapping views due to the color deviation and perspective difference. In this paper, we study these problems and propose an appearance modeling technique in order to perform the tracking across the multiple cameras. For single camera tracking, an effective integrated Kalman filter and multiple kernels tracking scheme is adopted. When maneuvering the tracking across multiple cameras, we build the brightness transfer functions (BTFs) to compensate the color difference between camera views. The BTF is constructed from the overlapping area during tracking by employing robust principal component analysis (RPCA). Moreover, the perspective difference can also be compensated by applying the tangent transfer functions (TTFs) derived by the homography between two cameras. We evaluate the proposed method using several real-scenario videos and obtain the promising results.