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引用次数: 0
摘要
多目标跟踪(MOT)因其在自动驾驶、人机交互和智能视频监控领域的广泛应用而受到越来越多的关注。特别是近年来,由于物体检测等相关技术的出现,多目标跟踪技术得到了快速发展,这有助于处理拥挤场景遮挡、小物体和类似外观等干扰因素。其中,基于检测的 MOT 是准确形成物体轨迹的主流技术。因此,根据对近三年研究的分析,本文特别着重讨论了 MOT 在各个阶段围绕物体检测发展的持续优化策略。此外,本文还介绍了常用的基准数据集和 MOT 的相关应用。
A Review of Detection-Related Multiple Object Tracking in Recent Times
Multi-object tracking (MOT) is garnering more attention due to its widespread application in the area of autonomous driving, human-computer interaction, and intelligent video surveillance. Especially in recent years, MOT has rapidly developed thanks to related technologies such as object detection, which has helped in handling interfering factors such as crowded scene occlusion, small objects, and similar appearances. Among these, Detection-based MOT is the mainstream for accurately forming objects' trajectories. Therefore, according to the analysis of the last three years' research, this paper particularly focuses on discussing the continuous optimization strategies of MOT around the development of object detection at each stage. In addition, this article also introduces the commonly used benchmark datasets and related applications of MOT.