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Light-Weight Visual Feature Based Labeling (LVFL) for Unsupervised Person Re-identification

机译:基于轻量视觉特征的标签(LVFL),用于无监督人员重新识别

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Person re-identification is a vital problem in smart video surveillance environment. Performing person reidentification with an unlabeled dataset is challenging. Even though certain labeling mechanisms are available in the literature, the computation overhead prevents the system to perform re-identification task dynamically. To overcome this issue, we propose a Light-weight Visual Feature based Labeling (LVFL) method to label the person re-identification images and reduce the computation overhead than the state-of-themethods. The computation overhead is reduced at three stages namely model initialization, neural network utilization and algorithmic complexity through evaluation of the cluster quality and Cumulative Match Curve (CMC) scores. The proposed method reports a reduced computation complexity than the traditional unsupervised person re-identification methods by determining a tight bound fine-tuning with a very less CMC score trade-off. Experimental results tested on three major benchmark datasets namely DukeMTMC re-id, Market1501 and CUHK03 show that the proposed LVFL produces a decent matching performance with a computation overhead reduction of about 29 % to 41 %.
机译:人员重新识别是智能视频监控环境中的重要问题。使用未标记的数据集执行人员重新识别具有挑战性。即使某些标记机制在文献中可用,但计算开销仍使系统无法动态执行重新识别任务。为了克服这个问题,我们提出了一种基于轻量级视觉特征的标签(LVFL)方法来对人员重新识别图像进行标签,并比方法状态减少了计算开销。通过评估群集质量和累积匹配曲线(CMC)分数,可在三个阶段(即模型初始化,神经网络利用率和算法复杂度)减少计算开销。与传统的无监督人员重新识别方法相比,所提出的方法通过确定紧密边界的微调(具有非常少的CMC评分折衷),从而降低了计算复杂度。在三个主要基准数据集(DukeMTMC re-id,Market1501和CUHK03)上测试的实验结果表明,所提出的LVFL产生了不错的匹配性能,其计算开销减少了约29%至41%。

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