GIAOTracker:具有全球信息和优化策略的综合MCMOT框架

Yunhao Du, Jun-Jun Wan, Yanyun Zhao, Binyu Zhang, Zhihang Tong, Junhao Dong
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引用次数: 36

摘要

近年来,多目标跟踪任务的算法得益于深度模型和视频质量的巨大进步。然而,在无人机视频等具有挑战性的场景中,它们仍然存在问题,例如小物体,摄像机移动和视图变化。本文提出了一种基于全局信息和优化策略的多目标跟踪器,称为GIAOTracker,它包括在线跟踪、全局链接和后处理三个阶段。在给定每帧检测的情况下,第一阶段利用摄像机运动、物体运动和物体外观的信息生成可靠的轨迹图。然后利用全局线索将它们关联到轨迹中,并通过四种后处理方法进行细化。凭借这三个阶段的有效性,GIAOTracker在VisDrone MOT数据集上实现了最先进的性能,并在VisDrone2021 MOT挑战赛中获得了第二名。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GIAOTracker: A comprehensive framework for MCMOT with global information and optimizing strategies in VisDrone 2021
In recent years, algorithms for multiple object tracking tasks have benefited from great progresses in deep models and video quality. However, in challenging scenarios like drone videos, they still suffer from problems, such as small objects, camera movements and view changes. In this paper, we propose a new multiple object tracker, which employs Global Information And some Optimizing strategies, named GIAOTracker It consists of three stages, i.e., online tracking, global link and post-processing. Given detections in every frame, the first stage generates reliable track- lets using information of camera motion, object motion and object appearance. Then they are associated into trajectories by exploiting global clues and refined through four post-processing methods. With the effectiveness of the three stages, GIAOTracker achieves state-of-the-art performance on the VisDrone MOT dataset and wins the 2nd place in the VisDrone2021 MOT Challenge.
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