UTM:具有身份感知特征增强的统一多目标跟踪模型

Sisi You, Hantao Yao, Bingkun Bao, Changsheng Xu
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引用次数: 5

摘要

近年来,多目标跟踪技术取得了巨大的成功,该技术包括目标检测、特征嵌入和身份关联。现有方法采用三步或两步范式来生成健壮的轨迹,其中身份关联独立于其他组件。然而,独立的身份关联导致tracklet中包含的身份感知知识不能用于增强检测和嵌入模块。为了克服现有方法的局限性,我们引入了一种新的统一跟踪模型(UTM)来桥接这三个组件,以产生一个互惠的正反馈回路。UTM的关键洞察是身份感知特征增强(IAFE),它通过利用身份感知知识来增强检测和嵌入,用于桥接并使这三个组件受益。形式上,IAFE包含身份感知增强注意(Identity-Aware Boosting Attention, IABA)和身份感知消除注意(Identity-Aware erase Attention, IAEA), IABA增强当前框架特征与身份感知知识之间的一致区域,IAEA抑制当前框架特征中的分散区域。通过更好的检测和嵌入,还可以生成更高质量的轨道。在三个基准上进行的公共和私人检测的大量实验证明了UTM的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
UTM: A Unified Multiple Object Tracking Model with Identity-Aware Feature Enhancement
Recently, Multiple Object Tracking has achieved great success, which consists of object detection, feature embedding, and identity association. Existing methods apply the three-step or two-step paradigm to generate robust trajectories, where identity association is independent of other components. However, the independent identity association results in the identity-aware knowledge contained in the tracklet not be used to boost the detection and embedding modules. To overcome the limitations of existing methods, we introduce a novel Unified Tracking Model (UTM) to bridge those three components for generating a positive feedback loop with mutual benefits. The key insight of UTM is the Identity-Aware Feature Enhancement (IAFE), which is applied to bridge and benefit these three components by utilizing the identity-aware knowledge to boost detection and embedding. Formally, IAFE contains the Identity-Aware Boosting Attention (IABA) and the Identity-Aware Erasing Attention (IAEA), where IABA enhances the consistent regions between the current frame feature and identity-aware knowledge, and IAEA suppresses the distracted regions in the current frame feature. With better detections and embeddings, higher-quality tracklets can also be generated. Extensive experiments of public and private detections on three benchmarks demonstrate the robustness of UTM.
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