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Easy Identification from Better Constraints: Multi-shot Person Re-identification from Reference Constraints

机译:从更好的约束中轻松识别:从参考约束中重新拍摄多人

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Multi-shot person re-identification (MsP-RID) utilizes multiple images from the same person to facilitate identification. Considering the fact that motion information may not be discriminative nor reliable enough for MsP-RID, this paper is focused on handling the large variations in the visual appearances through learning discriminative visual metrics for identification. Existing metric learning-based methods usually exploit pair-wise or triple-wise similarity constraints, that generally demands intensive optimization in metric learning, or leads to degraded performances by using sub-optimal solutions. In addition, as the training data are significantly imbalanced, the learning can be largely dominated by the negative pairs and thus produces unstable and non-discriminative results. In this paper, we propose a novel type of similarity constraint. It assigns the sample points to a set of reference points to produce a linear number of reference constraints. Several optimal transport-based schemes for reference constraint generation are proposed and studied. Based on those constraints, by utilizing a typical regressive metric learning model, the closed-form solution of the learned metric can be easily obtained. Extensive experiments and comparative studies on several public MsP-RID benchmarks have validated the effectiveness of our method and its significant superiority over the state-of-the-art MsP-RID methods in terms of both identification accuracy and running speed.
机译:多发人物重新识别(MsP-RID)利用来自同一个人的多个图像来促进识别。考虑到运动信息对于MsP-RID可能没有足够的区分性和可靠性,因此,本文着重于通过学习区分性视觉指标进行识别来处理视觉外观的较大变化。现有的基于度量学习的方法通常利用成对或三重相似性约束,这通常要求在度量学习中进行大量优化,或者通过使用次优解决方案而导致性能下降。另外,由于训练数据显着失衡,因此学习在很大程度上可能受到负数对的支配,从而产生不稳定和非歧视性的结果。在本文中,我们提出了一种新型的相似性约束。它将采样点分配给一组参考点,以生成线性数量的参考约束。提出并研究了几种基于最优运输的参考约束生成方案。基于这些约束,通过利用典型的回归度量学习模型,可以轻松获得学习度量的闭式解。在一些公开的MsP-RID基准上进行的大量实验和比较研究已验证了我们方法的有效性及其在识别准确性和运行速度方面均优于最新的MsP-RID方法。

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