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Unsupervised Attention Based Instance Discriminative Learning for Person Re-Identification

机译:无人监督的注意力实例对人的歧视性学习重新识别

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Recent advances in person re-identification have demonstrated enhanced discriminability, especially with supervised learning or transfer learning. However, since the data requirements—including the degree of data curations—are becoming increasingly complex and laborious, there is a critical need for unsupervised methods that are robust to large intra-class variations, such as changes in perspective, illumination, articulated motion, resolution, etc. Therefore, we propose an unsupervised framework for person re-identification which is trained in an end-to-end manner without any pre-training. Our proposed framework leverages a new attention mechanism that combines group convolutions to (1) enhance spatial attention at multiple scales and (2) reduce the number of trainable parameters by 59.6%. Additionally, our framework jointly optimizes the network with agglomerative clustering and instance learning to tackle hard samples. We perform extensive analysis using the Market1501 and DukeMTMC-reID datasets to demonstrate that our method consistently outperforms the state-of-the-art methods (with and without pre-trained weights).
机译:人民重新识别的最新进展表明,具有增强的可判断性,特别是在监督学习或转移学习中。然而,由于数据要求 - 包括数据疗法程度 - 变得越来越复杂,并且对难度的无监督方法具有艰巨的方法,这是对阶级内变化的稳健性,例如视角,照明,铰接运动的变化,因此,我们提出了一个无监督的框架,用于重新识别的人重新识别,这些框架在没有任何预先训练的情况下以端到端的方式培训。我们拟议的框架利用了一个新的关注机制,将组卷积与(1)增强了多种秤的空间注意,(2)将培训参数的数量减少59.6%。此外,我们的框架共同优化了网络与凝聚的聚类和实例学习来解决硬样品。我们使用Market1501和Dukemtmc-Reid数据集进行广泛的分析,以证明我们的方法始终如一地优于最先进的方法(有和没有预先训练的重量)。

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