拥挤场景中移动车辆的检测与跟踪

Xuefeng Song, R. Nevatia
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引用次数: 58

摘要

车辆间遮挡是多车跟踪中的一个重要问题。难点在于,当场景中合并多个车辆斑点时,前景斑点和车辆之间的一对一对应关系不成立。利用摄像机约束和车辆模型约束,提出了一种基于mcmc的多车合并分割方法。然后应用Viterbi算法在序列中搜索最优轨迹。我们的方法自动检测和跟踪多个方向变化和普遍遮挡的车辆,而不需要一个特殊的区域来单独初始化每个车辆。测试是在繁忙的街道十字路口的视频序列上进行的,并显示出非常有希望的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection and Tracking of Moving Vehicles in Crowded Scenes
Vehicle inter-occlusion is a significant problem for multiplevehicle tracking even with a static camera. The difficulty is that the one-to-one correspondence between foreground blobs and vehicles does not hold when multiple vehicle blobs are merged in the scene. Making use of camera and vehicle model constraints, we propose a MCMCbased method to segment multiple merged vehicles into individual vehicles with their respective orientation. Then a Viterbi algorithm is applied to search through the sequence for the optimal tracks. Our method automatically detects and tracks multiple vehicles with orientation changes and prevalent occlusion, without requiring a special region to initialize each vehicle individually. Tests are performed on video sequences from busy street intersections and show very promising results.
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