Global Based Deep Refineing Model For Person Retrieval

Zhihao Wang, F. Zhou
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Abstract

The performance of traditional part model in person retrieval is greatly affected by the quality of parts. The recent work[1] consider refining the hard partitioned part when training the network itself and got state-of-the-art performance, but during our experimentation, we found the masks which it generated contains the problems that misguide the networks with additional constraints, Targeting to solve above problem, we proposed a new networks called Global Refine Net. The backbone network focus on learning the local information which improve the ability of extract feature of details, Global Refine block introduce global information to adjust the hard-shaped part generated by the backbone network in an end-to-end manner. Also we modified the self-adversarial training mechanism in [1]. We employ an special loss function to prevent the incorrect convergence and adjust the degree of self-adversarial training, the new regularization term we added in the loss benefit both in stabilizing and speeding the training process. The performance of our model beat most previous soft partitioned works, improved about 2.3% rank-1 accuracy and 5.1% mAP to the PCB baseline on market-1501 dataset.
基于全局的人物检索深度细化模型
传统零件模型在人体检索中的性能受零件质量的影响较大。最近的工作[1]在训练网络本身时考虑对硬分区部分进行细化,并获得了最先进的性能,但在我们的实验中,我们发现它生成的掩模包含有额外约束误导网络的问题,针对上述问题,我们提出了一个新的网络,称为Global Refine Net。骨干网注重局部信息的学习,提高了提取细节特征的能力;全局细化块引入全局信息,对骨干网生成的硬形部分进行端到端调整。我们也在[1]中修改了自对抗训练机制。我们使用了一个特殊的损失函数来防止不正确的收敛和调整自对抗训练的程度,我们在损失中加入的新的正则化项在稳定和加速训练过程中都有好处。我们的模型的性能优于大多数以前的软分区工作,提高了约2.3%的rank-1精度和5.1%的mAP到市场-1501数据集的PCB基线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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