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Homocentric Hypersphere Feature Embedding for Person Re-Identification

机译:同心超球面特征嵌入用于人员重新识别

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Triplet loss and softmax loss are two widely used loss functions in Person Re-Identification (Person ReID). However, previous works that try to apply these two loss functions have measure inconsistency during training and testing stage and among different parts of the total loss function, which would cause inferior performance of models. To address this issue, we propose a novel homocentric hypersphere embedding scheme to decouple magnitude and orientation information for both feature and weight vectors, and reformulate the triplet loss and the softmax loss to their angular versions and combine them into an angular discriminative loss. We evaluate our proposed method extensively on the widely used Person ReID benchmarks. Our method demonstrates leading performance on all datasets.
机译:Triplet损失和softmax损失是Person Re-Identification(Person ReID)中两个广泛使用的损失函数。但是,先前尝试应用这两个损失函数的工作在训练和测试阶段以及总损失函数的不同部分之间存在度量不一致的情况,这将导致模型的性能较差。为了解决这个问题,我们提出了一种新颖的同心超球面嵌入方案,以解耦特征和权重矢量的幅度和方向信息,并将三重态损耗和softmax损耗重新构造为它们的角度形式,并将它们组合为角度区分性损耗。我们在广泛使用的Person ReID基准上广泛评估了我们提出的方法。我们的方法证明了在所有数据集上的领先性能。

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