With the recent advancement of deep convolutional neural networks, significant progress has been made in general face recognition. However, the state-of-the-art general face recognition models do not generalize well to occluded face images, which are exactly the common cases in real-world scenarios. The potential reasons are the absences of large-scale occluded face data for training and specific designs for tackling corrupted features brought by occlusions. This paper presents a novel face recognition method that is robust to occlusions based on a single end-to-end deep neural network. Our approach, named FROM (Face Recognition with Occlusion Masks), learns to discover the corrupted features from the deep convolutional neural networks, and clean them by the dynamically learned masks. In addition, we construct massive occluded face images to train FROM effectively and efficiently. FROM is simple yet powerful compared to the existing methods that either rely on external detectors to discover the occlusions or employ shallow models which are less discriminative. Experimental results on the LFW, Megaface challenge 1, RMF2, AR dataset and other simulated occluded/masked datasets confirm that FROM dramatically improves the accuracy under occlusions, and generalizes well on general face recognition. Code is available at https://github.com/haibo-qiu/FROM
翻译:最近,随着深层革命神经网络的进步,总体而言在面部认知上取得了显著进步。然而,最先进的一般面部识别模型并没有广泛推广到隐蔽的面部图像,这正是现实世界情景中常见的情况。潜在原因是缺乏大规模隐蔽的面部数据,用于培训和具体设计,以应对隐蔽性带来的腐败特征。本文件展示了一种新颖的面部识别方法,在单一端端至端端深神经网络的基础上,对隐蔽十分有力。我们的方法,从最先进的面部识别面部识别模型到深层神经网络中的腐败特征,并学习通过动态学习的面具来清除这些特征。此外,我们建造大规模隐蔽的面部图像,以便切实有效地培训。与现有方法相比,要么依靠外部检测发现隐蔽性,要么采用不太具歧视性的浅色模型。LFW的实验结果,MGF挑战1、RMF2、ARM2、GMS/Amimaliscalization Glaimalismations, 在通用代码下,现有数据/缩略性数据/透化法下,对一般数据/直观进行了确认。