Hariri Walid
Labged Laboratory, Computer Science department, Badji Mokhtar Annaba University, Annaba, Algeria.
Signal Image Video Process. 2022;16(3):605-612. doi: 10.1007/s11760-021-02050-w. Epub 2021 Nov 15.
The coronavirus disease (COVID-19) is an unparalleled crisis leading to a huge number of casualties and security problems. In order to reduce the spread of coronavirus, people often wear masks to protect themselves. This makes face recognition a very difficult task since certain parts of the face are hidden. A primary focus of researchers during the ongoing coronavirus pandemic is to come up with suggestions to handle this problem through rapid and efficient solutions. In this paper, we propose a reliable method based on occlusion removal and deep learning-based features in order to address the problem of the masked face recognition process. The first step is to remove the masked face region. Next, we apply three pre-trained deep Convolutional Neural Networks (CNN), namely VGG-16, AlexNet, and ResNet-50, and use them to extract deep features from the obtained regions (mostly eyes and forehead regions). The Bag-of-features paradigm is then applied to the feature maps of the last convolutional layer in order to quantize them and to get a slight representation comparing to the fully connected layer of classical CNN. Finally, Multilayer Perceptron (MLP) is applied for the classification process. Experimental results on Real-World-Masked-Face-Dataset show high recognition performance compared to other state-of-the-art methods.
冠状病毒病(COVID-19)是一场无与伦比的危机,导致了大量人员伤亡和安全问题。为了减少冠状病毒的传播,人们经常戴口罩来保护自己。这使得人脸识别成为一项非常困难的任务,因为脸部的某些部位被遮住了。在当前的冠状病毒大流行期间,研究人员的一个主要关注点是提出通过快速有效的解决方案来处理这个问题的建议。在本文中,我们提出了一种基于遮挡去除和深度学习特征的可靠方法,以解决蒙面人脸识别过程中的问题。第一步是去除蒙面脸部区域。接下来,我们应用三个预训练的深度卷积神经网络(CNN),即VGG-16、AlexNet和ResNet-50,并使用它们从获得的区域(主要是眼睛和额头区域)中提取深度特征。然后将特征袋范式应用于最后一个卷积层的特征图,以便对其进行量化,并获得与经典CNN的全连接层相比的轻微表示。最后,应用多层感知器(MLP)进行分类过程。与其他现有最先进方法相比,在真实世界蒙面人脸数据集上的实验结果显示出较高的识别性能。