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Pooling body parts on feature maps for misalignment robust person re-identification

机译:在特征图上合并身体部位,以实现对位失误,健壮的人员重新识别

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Misalignment caused by poorly detected bounding boxes or varying poses of human bodies is a critical challenge to robust person re-identification (re-ID) systems. Most previous works extract features either from the detected entire pedestrian images or from local image patches that are globally aligned or cropped according to human body landmarks. However, these methods still suffer from misalignment ofhuman bodies in different images. In this paper, we present a Deep Joint Learning (DJL) network to fulfill misalignment robust person re-ID. It locally aligns the human bodies by pooling the features around the body parts on feature maps, and jointly optimizes the global and aligned local features to further enhance the discriminative capability oflearned feature representations. Experimental results on Market-1501 and CUHK03 datasets show that our method can effectively handle the misalignment induced intra-class variations and yield competitive accuracy particularly on poorly aligned pedestrian images.
机译:由检测不到的边界框或人体姿势变化引起的未对准是强大的人员重新识别(re-ID)系统的关键挑战。以前的大多数作品都从检测到的整个行人图像中提取特征,或者从全局对齐或根据人体标志物裁剪的局部图像补丁中提取特征。然而,这些方法仍然遭受人体在不同图像中的失准的困扰。在本文中,我们提出了深度联合学习(DJL)网络,以实现错位鲁棒的人员重新ID。它通过在特征图上集中人体部位周围的特征来局部对齐人体,并共同优化全局和对齐的局部特征,以进一步增强学习的特征表示的判别能力。在Market-1501和CUHK03数据集上的实验结果表明,我们的方法可以有效地处理未对准引起的类内差异,并产生竞争准确性,尤其是在对准不良的行人图像上。

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