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Spatial segment-aware clustering based dynamic reliability threshold determination (SSC-DRTD) for unsupervised person re-identification

机译:用于无监督者重新识别的空间段感知群集基于动态可靠性阈值确定(SSC-DRTD)

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摘要

Person Re-Identification (re-ID) in a crowded multi-camera surveillance environment is a highly challenging task. The traditional benchmark datasets contain less number of occluded images due to the pre-planned setup and limited duration of the videos recorded. Unlike the traditional benchmark person re-ID datasets, real-world surveillance environment possess high static and dynamic occlusions. The analysis of different image segments captured in diverse environments by using a static reliability threshold leads to a poor matching accuracy. To resolve this issue of poor reliability threshold determination and to handle the occluded person re-ID images efficiently, we propose an unsupervised spatial segmented clustering model (SSC-DRTD) which determines a dynamic segment-wise reliability threshold. The unlabeled person re-ID images are segmented into k-parts to determine the segment-wise reliability threshold and the optimal number of segments for a given dataset. A cluster refinement strategy is proposed by incorporating the determined dynamic reliability threshold values to match the occluded noisy images with its appropriate ground truth identities for robust cluster formation. An improved rank evaluation has been performed on the benchmark person re-ID datasets such as DukeMTMC re-ID, Market1501, CUHK03, and MSMT17. The experimental results show the improved performance of our proposed SSC-DRTD model in handling occluded person re-ID images over the state-of-the-art unsupervised person re-ID methods. To further prove the efficiency of our proposed model, an exploratory analysis is performed by increasing the number of occluded query images to simulate the real-world surveillance scenario.
机译:在拥挤的多相机监控环境中重新识别(RE-ID)是一个非常具有挑战性的任务。由于录制的视频预先设置和有限的视频,传统的基准数据集包含少量的遮挡图像。与传统的基准人重新ID数据集不同,现实世界监控环境具有高静态和动态遮挡。通过使用静态可靠性阈值来分析在不同环境中捕获的不同图像段导致匹配精度差。为了解决这个问题差的可靠性阈值确定并有效地处理封闭的人物,我们提出了一种无监督的空间分段聚类模型(SSC-DRTD),其确定动态段 - 方向可靠性阈值。未标记的人重新ID图像被分段为k部分,以确定段的可靠性阈值和给定数据集的段的最佳数量。通过结合所确定的动态可靠性阈值来提出群集细化策略,以将遮挡的噪声图像与其适当的地面真实标识匹配,以获得鲁棒群集形成。在基准人物RE-ID数据集之类的基准人物RE-ID数据集中进行了改进的等级评估,例如DukemTMC RE-ID,Market1501,CUHK03和MSMT17。实验结果表明,我们提出的SSC-DRTD模型在处理遮挡人员重新监视的人的重新ID方法中的封闭人员重新ID图像方面的性能提高。为了进一步证明我们提出的模型的效率,通过增加遮挡查询图像的数量来模拟现实世界监控场景来执行探索性分析。

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