基于长期随机关联的多目标跟踪

Ting-Yueh Jeng, Bi Song, E. Staudt, Min Liu, A. Roy-Chowdhury, A. SenGupta
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引用次数: 3

摘要

在长时间内保持视频中多个目标的轨道稳定性仍然是一个具有挑战性的问题。最近在这个方向上显示出令人鼓舞的结果的一些方法依赖于学习上下文模型或训练数据的可用性。然而,这在许多应用程序场景中可能不可行。此外,跟踪方法应该能够跨多个分辨率的视频工作。在本文中,我们考虑了视频中的长期跟踪问题,其中上下文信息是不可先验的,也不能在线学习。我们的解决方案建立在假设大多数现有的跟踪器可以获得合理的短期轨迹(tracklet)的基础上。通过分析这些轨迹的统计特性,建立它们之间的联系,从而得到更长的轨迹。在跨越低分辨率和高分辨率数据的多个现实生活视频序列上,我们展示了在长时间内准确跟踪的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-target tracking using long-term stochastic associations
Maintaining the stability of tracks on multiple targets in video over extended time periods remains a challenging problem. A few methods which have recently shown encouraging results in this direction rely on learning context models or the availability of training data. However, this may not be feasible in many application scenarios. Moreover, tracking methods should be able to work across multiple resolutions of the video. In this paper, we consider the problem of long-term tracking in video in application domains where context information is not available a priori, nor can it be learned online. We build our solution on the hypothesis that most existing trackers can obtain reasonable short-term tracks (tracklets). By analyzing the statistical properties of these tracklets, we develop associations between them so as to come up with longer tracks. On multiple real-life video sequences spanning low and high resolution data, we show the ability to accurately track over extended time periods.
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