基于单尺度全局表征的闭塞人再识别

Cheng Yan, Guansong Pang, J. Jiao, Xiaolong Bai, Xuetao Feng, Chunhua Shen
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引用次数: 24

摘要

遮挡人再识别(ReID)旨在从多个摄像头拍摄的遮挡或整体图像中重新识别被遮挡的行人。当前最先进的(SOTA)遮挡ReID模型依赖于一些辅助模块,包括姿态估计、特征金字塔和图匹配模块,来学习多尺度和/或部分级特征来解决遮挡挑战。不幸的是,这导致了复杂的ReID模型(i)无法推广到具有不同外观、形状或大小的具有挑战性的遮挡,以及(ii)在处理未遮挡的行人时变得无效。然而,现实世界的ReID应用通常具有高度多样化的遮挡,并且涉及遮挡和非遮挡行人的混合。为了解决这两个问题,我们引入了一种新的ReID模型,该模型通过对基于遮挡的增强数据施加新的指数敏感但有界的距离损失来学习判别单尺度全球行人特征。我们首次证明,在不使用这些辅助模块的情况下学习单尺度全局特征能够优于SOTA多尺度和/或基于部件级特征的模型。此外,我们的简单模型可以在遮挡和非遮挡的ReID中实现新的SOTA性能,在三个遮挡和两个一般ReID基准上的广泛结果表明。此外,我们创建了不同场景下不同遮挡的大规模遮挡人ReID数据集,与现有遮挡ReID数据集相比,该数据集明显更大,包含更多不同的遮挡和行人敷料,提供了更忠实的遮挡ReID基准。该数据集可从https://git.io/OPReID获取
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Occluded Person Re-Identification with Single-scale Global Representations
Occluded person re-identification (ReID) aims at re-identifying occluded pedestrians from occluded or holistic images taken across multiple cameras. Current state-of-the-art (SOTA) occluded ReID models rely on some auxiliary modules, including pose estimation, feature pyramid and graph matching modules, to learn multi-scale and/or part-level features to tackle the occlusion challenges. This unfortunately leads to complex ReID models that (i) fail to generalize to challenging occlusions of diverse appearance, shape or size, and (ii) become ineffective in handling non-occluded pedestrians. However, real-world ReID applications typically have highly diverse occlusions and involve a hybrid of occluded and non-occluded pedestrians. To address these two issues, we introduce a novel ReID model that learns discriminative single-scale global-level pedestrian features by enforcing a novel exponentially sensitive yet bounded distance loss on occlusion-based augmented data. We show for the first time that learning single-scale global features without using these auxiliary modules is able to outperform the SOTA multi-scale and/or part-level feature-based models. Further, our simple model can achieve new SOTA performance in both occluded and non-occluded ReID, as shown by extensive results on three occluded and two general ReID benchmarks. Additionally, we create a large-scale occluded person ReID dataset with various occlusions in different scenes, which is significantly larger and contains more diverse occlusions and pedestrian dressings than existing occluded ReID datasets, providing a more faithful occluded ReID benchmark. The dataset is available at: https://git.io/OPReID
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