Learning to Recognize Masked Faces by Data Synthesis

Ziyan Wang, Tae Soo Kim
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引用次数: 4

Abstract

Face coverings have become the new normal for people living through the global COVID-19 pandemic crisis. While wearing a mask is a necessary public health measure, the social phenomenon raises new challenges to existing face recognition models. In this work, we evaluate deep neural network approaches for the masked face recognition task. We find that current deep networks can not generalize successfully to recognizing faces with masks. To address this issue, we investigate the use of images of faces with simulated masks to train a deep neural network model for face recognition. We train our model using a collection of two face recognition datasets: the Labeled Faces in the Wild (LFW) dataset, the Real-world Masked Face Recognition (RMFR) dataset and the Simulated Masked Face Recognition (SMFR) dataset. We find that the data sampling strategy during training plays a significant role when the number of simulated examples is much greater than that of available real instances. We show that the model trained using a combination of real and simulated data accurately classifies masked faces with an accuracy of 99%.
通过数据合成学习识别蒙面
在全球COVID-19大流行危机中,口罩已成为人们的新常态。虽然戴口罩是一项必要的公共卫生措施,但这一社会现象对现有的人脸识别模型提出了新的挑战。在这项工作中,我们评估了用于掩蔽人脸识别任务的深度神经网络方法。我们发现目前的深度网络不能成功地泛化到带面具的人脸识别。为了解决这个问题,我们研究了使用带有模拟面具的人脸图像来训练用于人脸识别的深度神经网络模型。我们使用两个人脸识别数据集的集合来训练我们的模型:野外标记人脸(LFW)数据集,真实世界屏蔽人脸识别(RMFR)数据集和模拟屏蔽人脸识别(SMFR)数据集。我们发现,当模拟实例的数量远远大于可用的实际实例时,训练过程中的数据采样策略起着重要的作用。我们表明,使用真实和模拟数据组合训练的模型可以准确地对被蒙面进行分类,准确率达到99%。
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