A joint feature aggregation method for robust masked face recognition

Xinmeng Xu, Yuesheng Zhu, Zhiqiang Bai
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Abstract

Masked face recognition becomes an important issue of prevention and monitor in outbreak of COVID-19. Due to loss of facial features caused by masks, unmasked face recognition could not identify the specific person well. Current masked faces methods focus on local features from the unmasked regions or recover masked faces to fit standard face recognition models. These methods only focus on partial information of faces thus these features are not robust enough to deal with complex situations. To solve this problem, we propose a joint feature aggregation method for robust masked face recognition. Firstly, we design a multi-module feature extraction network to extract different features, including local module (LM), global module (GM), and recovery module (RM). Our method not only extracts global features from the original masked faces but also extracts local features from the unmasked area since it is a discriminative part of masked faces. Specially, we utilize a pretrained recovery model to recover masked faces and get some recovery features from the recovered faces. Finally, features from three modules are aggregated as a joint feature of masked faces. The joint feature enhances the feature representation of masked faces thus it is more discriminative and robust than that in previous methods. Experiments show that our method can achieve better performance than previous methods on LFW dataset.
一种联合特征聚合的鲁棒被蒙面人脸识别方法
蒙面人脸识别成为新冠肺炎疫情防控监测的重要课题。由于口罩造成的面部特征缺失,脱面罩的人脸识别不能很好地识别具体的人。目前的人脸识别方法主要是从未被遮挡的区域提取局部特征,或者通过恢复被遮挡的人脸来拟合标准人脸识别模型。这些方法只关注人脸的部分信息,因此这些特征的鲁棒性不足以处理复杂的情况。为了解决这一问题,我们提出了一种联合特征聚合的鲁棒被遮挡人脸识别方法。首先,我们设计了一个多模块特征提取网络,提取不同的特征,包括局部模块(LM)、全局模块(GM)和恢复模块(RM)。该方法不仅可以从原始被蒙面中提取全局特征,还可以从未被蒙面区域提取局部特征,因为未被蒙面区域是被蒙面的判别部分。特别地,我们利用一个预训练的恢复模型来恢复被遮挡的人脸,并从恢复的人脸中得到一些恢复特征。最后,将三个模块的特征聚合为被遮挡人脸的联合特征。联合特征增强了被遮挡人脸的特征表征,比以往的方法具有更好的判别性和鲁棒性。实验表明,该方法在LFW数据集上取得了比以往方法更好的性能。
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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