Object tracking in the presence of occlusions using multiple cameras: A sensor network approach

A. Ercan, A. Gamal, L. Guibas
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引用次数: 31

Abstract

This article describes a sensor network approach to tracking a single object in the presence of static and moving occluders using a network of cameras. To conserve communication bandwidth and energy, we combine a task-driven approach with camera subset selection. In the task-driven approach, each camera first performs simple local processing to detect the horizontal position of the object in the image. This information is then sent to a cluster head to track the object. We assume the locations of the static occluders to be known, but only prior statistics on the positions of the moving occluders are available. A noisy perspective camera measurement model is introduced, where occlusions are captured through occlusion indicator functions. An auxiliary particle filter that incorporates the occluder information is used to track the object. The camera subset selection algorithm uses the minimum mean square error of the best linear estimate of the object position as a metric, and tracking is performed using only the selected subset of cameras. Using simulations and preselected subsets of cameras, we investigate (i) the dependency of the tracker performance on the accuracy of the moving occluder priors, (ii) the trade-off between the number of cameras and the occluder prior accuracy required to achieve a prescribed tracker performance, and (iii) the importance of having occluder priors to the tracker performance as the number of occluders increases. We find that computing moving occluder priors may not be worthwhile, unless it can be obtained cheaply and to high accuracy. We also investigate the effect of dynamically selecting the subset of camera nodes used in tracking on the tracking performance. We show through simulations that a greedy selection algorithm performs close to the brute-force method and outperforms other heuristics, and the performance achieved by greedily selecting a small fraction of the cameras is close to that of using all the cameras.
使用多摄像机进行遮挡下的目标跟踪:一种传感器网络方法
本文描述了一种传感器网络方法,使用相机网络在静态和移动遮挡物存在的情况下跟踪单个物体。为了节省通信带宽和能量,我们将任务驱动方法与相机子集选择相结合。在任务驱动方法中,每个摄像机首先进行简单的局部处理,以检测图像中物体的水平位置。然后将此信息发送到簇头以跟踪对象。我们假设静态遮挡物的位置是已知的,但只有移动遮挡物位置的先验统计数据是可用的。介绍了一种噪声透视相机测量模型,该模型通过遮挡指示函数捕获遮挡。结合遮挡信息的辅助粒子滤波器用于跟踪目标。相机子集选择算法使用目标位置的最佳线性估计的最小均方误差作为度量,并且仅使用选定的相机子集进行跟踪。使用模拟和预选的相机子集,我们研究了(i)跟踪器性能对运动遮挡器先验精度的依赖,(ii)实现规定跟踪器性能所需的相机数量和遮挡器先验精度之间的权衡,以及(iii)随着遮挡器数量的增加,具有遮挡器先验对跟踪器性能的重要性。我们发现,计算运动遮挡物先验可能是不值得的,除非它可以廉价和高精度地获得。我们还研究了动态选择用于跟踪的相机节点子集对跟踪性能的影响。我们通过模拟表明,贪婪选择算法的性能接近于暴力方法,优于其他启发式算法,并且贪婪选择一小部分相机所获得的性能接近于使用所有相机的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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