DyGLIP:一种基于链路预测的多相机多目标精确跟踪动态图模型

Kha Gia Quach, Pha Nguyen, Huu Le, Thanh-Dat Truong, C. Duong, M. Tran, Khoa Luu
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引用次数: 26

摘要

多相机多目标跟踪(MC-MOT)是一个重要的计算机视觉问题,因为它在一些现实世界的应用中出现了新的适用性。尽管已有大量的工作,但解决任何MC-MOT管道中的数据关联问题可以说是最具挑战性的任务之一。然而,由于许多实际问题,如不一致的照明条件、不同的物体运动模式或相机之间物体的轨迹遮挡,开发一个强大的MC-MOT系统仍然具有很高的挑战性。为了解决这些问题,本工作提出了一种新的带有链接预测的动态图模型(DyGLIP)方法1来解决数据关联任务。与现有方法相比,我们的新模型提供了几个优势,包括更好的特征表示和在相机转换期间从丢失的轨迹中恢复的能力。此外,无论相机之间的重叠比例如何,我们的模型都能优雅地工作。实验结果表明,在几个实际数据集上,我们的算法大大优于现有的MC-MOT算法。值得注意的是,我们的模型在在线设置上工作良好,但可以扩展到大规模数据集的增量方法。
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DyGLIP: A Dynamic Graph Model with Link Prediction for Accurate Multi-Camera Multiple Object Tracking
Multi-Camera Multiple Object Tracking (MC-MOT) is a significant computer vision problem due to its emerging applicability in several real-world applications. Despite a large number of existing works, solving the data association problem in any MC-MOT pipeline is arguably one of the most challenging tasks. Developing a robust MC-MOT system, however, is still highly challenging due to many practical issues such as inconsistent lighting conditions, varying object movement patterns, or the trajectory occlusions of the objects between the cameras. To address these problems, this work, therefore, proposes a new Dynamic Graph Model with Link Prediction (DyGLIP) approach 1 to solve the data association task. Compared to existing methods, our new model offers several advantages, including better feature representations and the ability to recover from lost tracks during camera transitions. Moreover, our model works gracefully regardless of the overlapping ratios between the cameras. Experimental results show that we out-perform existing MC-MOT algorithms by a large margin on several practical datasets. Notably, our model works favor-ably on online settings but can be extended to an incremental approach for large-scale datasets.
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