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Robust joint learning network: improved deep representation learning for person re-identification

机译:强大的联合学习网络:改进的深度表示学习,用于人员重新识别

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摘要

Existing person re-identification methods, which based on deep representation learning, mostly only focus on either global feature or local feature. This obviously ignores the joint advantages and the correlation between global and local features. In this paper, we test and verify the benefits of jointly learning local and global features in a network based on the Convolutional Neural Network (CNN). Specifically, we give distinct weights to global loss and local loss when considering their different influence on our research, then we innovatively combine two losses into one loss. Besides, we propose a novel and strong network to learn part-level features with unified partition. Experimental results on three person ReID data sets, show that our method outperforms existing deep learning methods.
机译:基于深度表示学习的现有人员重新识别方法主要只关注全局特征或局部特征。这显然忽略了联合优势以及全局和局部特征之间的关联。在本文中,我们测试并验证了在基于卷积神经网络(CNN)的网络中共同学习局部和全局特征的好处。具体来说,当我们考虑全局损失和局部损失对我们研究的不同影响时,我们将其分别赋予不同的权重,然后将两种损失创新地组合为一种损失。此外,我们提出了一个新颖而强大的网络来学习具有统一分区的零件级功能。在三人ReID数据集上的实验结果表明,我们的方法优于现有的深度学习方法。

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