多目标跟踪的线性规划方法

Hao Jiang, S. Fels, J. Little
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引用次数: 370

摘要

针对一类多目标跟踪问题,提出了一种线性规划松弛方案,其中目标间交互度量为凸,量化目标状态连续性的目标内项可以使用任意度量。该方案将目标跟踪建模为一个多路径搜索问题。它显式地建模跟踪交互,如对象空间布局一致性或相互遮挡,并同时优化多个对象轨道。该方案不依赖于轨迹初始化和复杂的启发式算法。它的平均复杂度远低于以往的高效穷举搜索方法,如扩展动态规划,并且能够以高概率找到全局最优解。我们已经成功地将该方法应用于视频流中的多目标跟踪。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Linear Programming Approach for Multiple Object Tracking
We propose a linear programming relaxation scheme for the class of multiple object tracking problems where the inter-object interaction metric is convex and the intra-object term quantifying object state continuity may use any metric. The proposed scheme models object tracking as a multi-path searching problem. It explicitly models track interaction, such as object spatial layout consistency or mutual occlusion, and optimizes multiple object tracks simultaneously. The proposed scheme does not rely on track initialization and complex heuristics. It has much less average complexity than previous efficient exhaustive search methods such as extended dynamic programming and is found to be able to find the global optimum with high probability. We have successfully applied the proposed method to multiple object tracking in video streams.
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