使用前景模式检测静态遮挡边缘

Grant Miller, S. Atev, N. Papanikolopoulos
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引用次数: 1

摘要

在许多现实场景中,静态遮挡是成功跟踪目标的常见障碍。了解摄像机视场中遮挡的位置可以使跟踪算法成功地处理遮挡事件。我们提出了一种简单有效的基于规则的方法,通过分析来自单个相机的图像来查找场景中的大型刚性遮挡物。通过从输入视频中获得的二进制前景分割掩码中出现的特定时空模式来识别沿遮挡边缘的像素。我们算法的最终输出是一个二进制掩码,表示场景中静态遮挡物的位置。我们给出了几个室外场景的实验结果,并将该算法的性能与先前提出的方法进行了比较。
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Detecting static occlusion edges using foreground patterns
Static occlusions are a common impediment to successful object tracking in many realistic scenes. Knowledge about the locations of occlusions in the field of view of video cameras can allow tracking algorithms to successfully handle occlusion events. We present a simple and efficient rule-based method for finding large, rigid occluders in a scene by analysis of images from a single camera. Pixels along occlusion edges are identified through specific spatiotemporal patterns occurring in the binary foreground segmentation masks obtained from the input video. The final output of our algorithm is a binary mask indicating the locations of static occluders in the scene. We present experimental results from several outdoor scenes and compare the performance of the algorithm with a previously proposed method.
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