Satellite Multi-Vehicle Tracking under Inconsistent Detection Conditions by Bilevel K-Shortest Paths Optimization

Junpeng Zhang, X. Jia, Jiankun Hu, Kun Tan
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引用次数: 10

Abstract

Tracking multiple vehicles in optical satellite videos can be achieved by detecting vehicles in individual frames and then link detections across frames. This is challenging since the low spatial resolution of satellite videos would lead to miss or partial detections. Failure in consistently detecting an identical vehicle would terminate a trajectory for loss of identity, or reinitialize a new trajectory for re-detection. Both would result in fragmented tracklets for an identical vehicle. In this paper, we propose a two-step global data association approach for multiple target tracking, which first generates local tracklets then merges them to global trajectories. In order to handle the frequent terminals of tracklets caused by the miss or partial detections, the spatial grid flow model has been extended to temporal neighboring grids to cover the possible connectivities in a wider temporal neighboring, so that the detection association could match temporal-unlinked detections. In the tracklet association model, we customize a tracklet transition probability based on Kalman Filter to link tracklets with large temporal intervals. A near-optimal solution to the proposed two-step association problem is found by Bilevel K-shortest Paths Optimization. Experiments on a satellite video show that our approach improves both detection and tracking performance of moving vehicles.
基于双k最短路径优化的非一致检测条件下卫星多飞行器跟踪
通过在单个帧中检测车辆,然后跨帧链接检测,可以实现对光学卫星视频中多个车辆的跟踪。这是具有挑战性的,因为卫星视频的低空间分辨率将导致遗漏或部分检测。如果未能持续检测到相同的车辆,则会因身份丢失而终止轨迹,或者重新初始化新轨迹以重新检测。这两种情况都会导致同一辆车的履带碎片化。本文提出了一种两步全局数据关联的多目标跟踪方法,首先生成局部轨迹,然后将其合并到全局轨迹中。为了处理由于检测缺失或部分检测导致的轨迹点频繁终端的问题,将空间网格流模型扩展到时间相邻网格,在更宽的时间相邻网格中覆盖可能的连通性,使检测关联能够匹配时间不相连的检测。在轨道关联模型中,我们基于卡尔曼滤波自定义轨道转移概率,将时间间隔较大的轨道关联起来。通过双级k最短路径优化,找到了两步关联问题的近最优解。卫星视频实验表明,该方法提高了移动车辆的检测和跟踪性能。
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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