Face recognition under ideal conditions is now considered a well-solved problem with advances in deep learning. Recognizing faces under occlusion, however, still remains a challenge. Existing techniques often fail to recognize faces with both the mouth and nose covered by a mask, which is now very common under the COVID-19 pandemic. Common approaches to tackle this problem include 1) discarding information from the masked regions during recognition and 2) restoring the masked regions before recognition. Very few works considered the consistency between features extracted from masked faces and from their mask-free counterparts. This resulted in models trained for recognizing masked faces often showing degraded performance on mask-free faces. In this paper, we propose a unified framework, named Face Feature Rectification Network (FFR-Net), for recognizing both masked and mask-free faces alike. We introduce rectification blocks to rectify features extracted by a state-of-the-art recognition model, in both spatial and channel dimensions, to minimize the distance between a masked face and its mask-free counterpart in the rectified feature space. Experiments show that our unified framework can learn a rectified feature space for recognizing both masked and mask-free faces effectively, achieving state-of-the-art results. Project code: https://github.com/haoosz/FFR-Net
翻译:在理想条件下,人们现在认为在理想条件下对面的承认是一个与深层学习进步相适应的很好的问题。但是,认识面部在封闭之下仍然是一个挑战。现有的技术往往无法识别面罩所覆盖的口和鼻部面部,在COVID-19大流行下,这种面部现在非常常见。解决这一问题的共同办法包括:(1)在承认期间抛弃蒙蔽区域的信息,(2)在承认之前恢复蒙面区域。很少有人考虑从遮面面和从无遮面对面处提取的特征之间的一致性。这导致为识别面罩而培训的模型往往显示无面罩面部的退化性能。在本文件中,我们提出了一个统一框架,名为面部特征校正网络(FF-Net),既承认面部面部面部面部面部,又承认无遮面面面面面面面部。我们引入了校正障碍,以纠正通过在空间和频道层面的状态识别通过状态识别识别模式提取的特征,以尽量减少遮面面面面面面面面部面部和无面罩对面部的对面部。实验表明,我们的统一框架可以学习校正的特征空间,以识别的特征空间识别:MDas-ma-ma-ma-rof-rof-rof-com/ma-com/ma-com-com-ma-com-com-comf-comma-ma-commaus-commaus-maus-ma-ma-ma-ma-ma-ma-ma-ma-ma-moxus-maxus-max-ma-ma-maxususus-max-max-ma-ma-max-moxus-mox-mox-mox-moxus-moxus-moxus-moxals-moxus-moxus-moxus-moxal-mox