Deep Learning Model Based on Mobile-Net with Haar-like Algorithm for Masked Face Recognition at Nuclear Facilities

Nadia.M. Nawwar*, Kasban . Prof., Salama May
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Abstract

During the spread of the COVID-I9 pandemic in early 2020, the WHO organization advised all people in the world to wear face-mask to limit the spread of COVID-19. Many facilities required that their employees wear face-mask. For the safety of the facility, it was mandatory to recognize the identity of the individual wearing the mask. Hence, face recognition of the masked individuals was required. In this research, a novel technique is proposed based on a mobile-net and Haar-like algorithm for detecting and recognizing the masked face. Firstly, recognize the authorized person that enters the nuclear facility in case of wearing the masked-face using mobile-net. Secondly, applying Haar-like features to detect the retina of the person to extract the boundary box around the retina compares this with the dataset of the person without the mask for recognition. The results of the proposed modal, which was tested on a dataset from Kaggle, yielded 0.99 accuracies, a loss of 0.08, F1.score 0.98.
基于移动网络haar算法的核设施掩面人脸识别深度学习模型
在2020年初新冠肺炎大流行期间,世卫组织建议全世界所有人戴口罩,以限制新冠病毒的传播。许多工厂要求员工戴口罩。为了设施的安全,必须识别戴口罩的人的身份。因此,需要对被问及的个体进行面部识别。在本研究中,提出了一种基于移动网络和类哈尔算法的被遮挡人脸检测与识别新技术。首先,通过移动网络识别戴口罩进入核设施的被授权人员。其次,利用Haar-like特征对人的视网膜进行检测,提取视网膜周围的边界框,并与未戴口罩的人的数据集进行比较,进行识别。在Kaggle的数据集上测试了所提出的模型的结果,准确率为0.99,损失为0.08,F1.score0.98。
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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