首页> 外文会议>Image Processing (ICIP 2009), 2009 >Joint particle filters and multi-mode anisotropic mean shift for robust tracking of video objects with partitioned areas
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Joint particle filters and multi-mode anisotropic mean shift for robust tracking of video objects with partitioned areas

机译:联合粒子滤波器和多模式各向异性均值漂移,可对具有分区区域的视频对象进行稳健跟踪

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We propose a novel scheme that jointly employs anisotropic mean shift and particle filters for tracking moving objects from video. The proposed anisotropic mean shift, that is applied to partitioned areas in a candidate object bounding box whose parameters (center, width, height and orientation) are adjusted during the mean shift iterations, seeks multiple local modes in spatial-kernel weighted color histograms. By using a Gaussian distributed Bhattacharyya distance as the likelihood and mean shift updated parameters as the state vector, particle filters become more efficient in terms of tracking using a small number of particles (<20). The combined scheme is able to maintain the merits of both methods. Experiments conducted on videos containing deformable objects with long-term partial occlusions and intersections have shown robust tracking performance. Comparisons with two existing methods have been made which showed marked improvement in terms of robustness to occlusions, tightness and accuracy of tracked box, and tracking drift.
机译:我们提出了一种新颖的方案,共同采用各向异性平均转移和粒子过滤器来跟踪来自视频的移动物体。在平均移位迭代期间调整参数(中心,宽度,高度和方向)的候选对象边界框中应用于候选对象边界框中的分区区域的提出的各向异性均值平均转换,请在Spatial-kernel加权颜色直方图中寻找多种本地模式。通过使用高斯分布的Bhattacharyya距离作为可能性和平均移位的参数作为状态向量,粒子过滤器在使用少量粒子(<20)的跟踪方面变得更有效。组合方案能够维持两种方法的优点。在包含可变形对象的视频上进行的实验,具有长期部分闭塞和交叉点显示了稳健的跟踪性能。已经制定了具有两个现有方法的比较,其对梳理盒的鲁棒性,紧密性和准确性以及跟踪漂移来说显着改善。

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