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Track-Clustering Error Evaluation for Track-Based Multi-camera Tracking System Employing Human Re-identification

机译:采用人类重新识别的基于跟踪的基于轨道的多摄像机跟踪系统的轨道聚类错误评估

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In this study, we present a set of new evaluation measures for the track-based multi-camera tracking (T-MCT) task leveraging the clustering measurements. We demonstrate that the proposed evaluation measures provide notable advantages over previous ones. Moreover, a distributed and online T-MCT framework is proposed, where re-identification (Re-id) is embedded in T-MCT, to confirm the validity of the proposed evaluation measures. Experimental results reveal that with the proposed evaluation measures, the performance of T-MCT can be accurately measured, which is highly correlated to the performance of Re-id. Furthermore, it is also noted that our T-MCT framework achieves competitive score on the DukeMTMC dataset when compared to the previous work that used global optimization algorithms. Both the evaluation measures and the inter-camera tracking framework are proven to be the stepping stone for multi-camera tracking.
机译:在这项研究中,我们为利用聚类测量的基于轨道的多摄像机跟踪(T-MCT)任务提供了一套新的评估措施。我们证明,拟议的评估措施提供了对以前的策略的显着优势。此外,提出了一种分布式和在线T-MCT框架,其中重新识别(重新ID)嵌入T-MCT中,以确认所提出的评估措施的有效性。实验结果表明,随着所提出的评估措施,可以准确地测量T-MCT的性能,与RE-ID的性能高度相关。此外,还注意到,与使用全局优化算法的上一个工作相比,我们的T-MCT框架在DukemTMC数据集上实现了竞争分数。评估措施和相互相互作用的跟踪框架被证明是多相机跟踪的踏脚石。

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