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Mancs: A Multi-task Attentional Network with Curriculum Sampling for Person Re-Identification

机译:Mancs:具有人员抽样的课程抽样的多任务注意力网络

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We propose a novel deep network called Manes that solves the person re-identification problem from the following aspects: fully utilizing the attention mechanism for the person misalignment problem and properly sampling for the ranking loss to obtain more stable person representation. Technically, we contribute a novel fully attentional block which is deeply supervised and can be plugged into any CNN, and a novel curriculum sampling method which is effective for training ranking losses. The learning tasks are integrated into a unified framework and jointly optimized. Experiments have been carried out on Marketl501, CUHK03 and DukeMTMC. All the results show that Manes can significantly outperform the previous state-of-the-arts. In addition, the effectiveness of the newly proposed ideas has been confirmed by extensive ablation studies.
机译:我们提出了一种新颖的深层网络,称为Manes,它从以下几个方面解决了人的重新识别问题:充分利用注意力机制解决人的错位问题,并适当地对排名损失进行抽样,以获得更稳定的人代表。从技术上讲,我们提供了一种新颖的,全神贯注的程序块,该程序可以进行深入的监督,并且可以插入任何CNN中,并且可以提供一种新颖的课程抽样方法,这种方法可以有效地训练排名损失。学习任务被集成到一个统一的框架中并共同优化。已经在Marketl501,CUHK03和DukeMTMC上进行了实验。所有结果表明,Manes可以大大优于以前的最新技术。此外,新提出的想法的有效性已通过广泛的消融研究得到证实。

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