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Robust Pedestrian Detection for Semi-automatic Construction of a Crowded Person Re-Identification Dataset

机译:半自动构建拥挤人员重新识别数据集的鲁棒行人检测

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The problem of re-identification of people in a crowd commonly arises in real application scenarios, yet it has received less attention than it deserves. To facilitate research focusing on this problem, we have embarked on constructing a new person re-identification dataset with many instances of crowded indoor and outdoor scenes. This paper proposes a two-stage robust method for pedestrian detection in a complex crowded background to provide bounding box annotations. The first stage is to generate pedestrian proposals using Faster R-CNN and locate each pedestrian using Non-maximum Suppression (NMS). Candidates in dense proposal regions are merged to identify crowd patches. We then apply a bottom-up human pose estimation method to detect individual pedestrians in the crowd patches. The locations of all subjects are achieved based on the bounding boxes from the two stages. The identity of the detected subjects throughout each video is then automatically annotated using multiple features and spatial-temporal clues. The experimental results on a crowded pedestrians dataset demonstrate the effectiveness and efficiency of the proposed method.
机译:在真实的应用场景中通常会出现人群重新识别的问题,但是受到的关注却很少。为了促进针对此问题的研究,我们着手构建了一个新的人重新识别数据集,其中包含许多拥挤的室内和室外场景。本文提出了一种在复杂拥挤背景下行人检测的两阶段鲁棒方法,以提供边界框注释。第一步是使用Faster R-CNN生成行人建议,并使用非最大抑制(NMS)定位每个行人。合并提案区域中的候选人,以识别人群。然后,我们应用自下而上的人体姿势估计方法来检测人群中的各个行人。所有对象的位置都是基于两个阶段中的边界框来确定的。然后,使用多个功能和时空线索自动注释整个视频中检测到的主题的身份。在拥挤的行人数据集上的实验结果证明了该方法的有效性和效率。

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