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Person Re-identification by Mid-level Attribute and Part-based Identity Learning

机译:通过中级属性和基于部分的身份学习进行人员重新识别

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Existing deep models using attributes usually take global features for identity classification and attribute recognition. However, some attributes exist in local position, such as a hat and shoes, therefore global feature alone is insufficient for person representation. In this work, we propose to use the attribute recognition as an auxiliary task for person re-identification. The attributes are recognised from the local regions of mid-level layers. Besides, we extract local features and global features from a high-level layer for identity classification. The mid-level attribute learning improves the discrimination of high-level features, and the local feature is complementary to the global feature. We report competitive results on two large-scale person re-identification benchmarks, Market-1501 and DukeMTMC-reID datasets, which demonstrate the effectiveness of the proposed method.
机译:现有的使用属性的深度模型通常采用全局特征进行身份分类和属性识别。但是,某些属性存在于局部位置,例如帽子和鞋子,因此仅全局特征不足以代表人。在这项工作中,我们建议使用属性识别作为人员重新识别的辅助任务。从中层的本地区域识别属性。此外,我们从高层中提取局部特征和全局特征以进行身份​​分类。中级属性学习改善了对高级功能的区分,而局部功能是全局功能的补充。我们在两个大型人员重新识别基准(Market-1501和DukeMTMC-reID数据集)上报告了竞争结果,这证明了所提出方法的有效性。

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