Online Multi-Object Tracking With Instance-Aware Tracker and Dynamic Model Refreshment

Peng Chu, Heng Fan, C. C. Tan, Haibin Ling
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引用次数: 98

Abstract

Recent progresses in model-free single object tracking (SOT) algorithms have largely inspired applying SOT to multi-object tracking (MOT) to improve the robustness as well as relieving dependency on external detector. However, SOT algorithms are generally designed for distinguishing a target from its environment, and hence meet problems when a target is spatially mixed with similar objects as observed frequently in MOT. To address this issue, in this paper we propose an instance-aware tracker to integrate SOT techniques for MOT by encoding awareness both within and between target models. In particular, we construct each target model by fusing information for distinguishing target both from background and other instances (tracking targets). To conserve uniqueness of all target models, our instance-aware tracker considers response maps from all target models and assigns spatial locations exclusively to optimize the overall accuracy. Another contribution we make is a dynamic model refreshing strategy learned by a convolutional neural network. This strategy helps to eliminate initialization noise as well as to adapt to variation of target size and appearance. To show the effectiveness of the proposed approach, it is evaluated on the popular MOT15 and MOT16 challenge benchmarks. On both benchmarks, our approach achieves the best overall performances in comparison with published results.
基于实例感知跟踪和动态模型刷新的在线多目标跟踪
无模型单目标跟踪(SOT)算法的最新进展极大地启发了将SOT应用于多目标跟踪(MOT),以提高鲁棒性并减轻对外部检测器的依赖。然而,SOT算法通常是为了将目标与其环境区分开来而设计的,因此在MOT中经常观察到目标与相似物体在空间上混合时,会遇到问题。为了解决这个问题,在本文中,我们提出了一个实例感知跟踪器,通过在目标模型内部和之间编码感知来集成MOT的SOT技术。特别是,我们通过融合信息来构建每个目标模型,以区分目标与背景和其他实例(跟踪目标)。为了保持所有目标模型的唯一性,我们的实例感知跟踪器考虑来自所有目标模型的响应图,并专门分配空间位置以优化整体精度。我们的另一个贡献是卷积神经网络学习的动态模型刷新策略。该策略有助于消除初始化噪声,并适应目标尺寸和外观的变化。为了证明所提出方法的有效性,在流行的MOT15和MOT16挑战基准上对其进行了评估。在这两个基准测试中,与已公布的结果相比,我们的方法实现了最佳的总体性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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