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A graph-based algorithm for multi-target tracking with occlusion

机译:一种基于图形的遮挡多目标跟踪算法

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Multi-target tracking plays a key role in many computer vision applications including robotics, human-computer interaction, event recognition, etc., and has received increasing attention in past several years. Starting with an object detector is one of many approaches used by existing multi-target tracking methods to create initial short tracks called tracklets. These tracklets are then gradually grouped into longer final tracks in a heirarchical framework. Although object detectors have greatly improved in recent years, these detectors are far from perfect and can fail to detect the object of interest or identify a false positive as the desired object. Due to the presence of false positives or mis-detections from the object detector, these tracking methods can suffer from track fragmentations and identity switches. To address this problem, we formulate multi-target tracking as a min-cost flow graph problem which we call the average shortest path. This average shortest path is designed to be less biased towards the track length. In our average shortest path framework, object misdetection is treated as an occlusion and is represented by the edges between track-let nodes across non consecutive frames. We evaluate our method on the publicly available ETH dataset. Camera motion and long occlusions in a busy street scene make ETH a challenging dataset. We achieve competitive results with lower identity switches on this dataset as compared to the state of the art methods.
机译:多目标跟踪在许多计算机视觉应用程序中起着关键作用,包括机器人,人机互动,事件识别等,并且在过去几年中受到了不断的关注。从对象检测器开始是现有多目标跟踪方法使用的许多方法之一,以创建名为Tracklet的初始短轨道。然后将这些Tracklet逐渐被分组成大型框架中的更长的最终轨道。尽管近年来对象探测器大大提高,但这些探测器远非完美,并且无法检测到感兴趣的对象或识别假阳性作为所需对象。由于存在来自物体检测器的误报或错误检测,这些跟踪方法可以遭受轨道碎片和标识交换机。为了解决这个问题,我们将多目标跟踪制定为我们称之为平均最短路径的最小成本流图问题。该平均最短路径设计为朝向轨道长度的偏置较小。在我们的平均最短路径框架中,对象误认为被视为遮挡,并且由轨道之间的边缘表示在非连续帧之间的节点之间。我们在公开的ETH数据集上评估我们的方法。在繁忙的街道场景中的相机运动和长闭塞使eth成为一个具有挑战性的数据集。与现有技术的状态相比,我们在此数据集中实现了较低的身份开关的竞争结果。

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