A Novel Hybrid Approach to Masked Face Recognition using Robust PCA and GOA Optimizer

Mohammed Taha, Tarek Mostafa, Tarek Abd El-Rahman
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Abstract

The use of face masks has become ubiquitous across a wide range of industries and professions, including healthcare, food service, construction, manufacturing, retail, hospitality, transportation, education, and public safety. To overcome this challenge, masked face recognition has emerged as a vital technology in recent years. By utilizing advanced algorithms and deep learning techniques, masked face recognition enables accurate identification and authentication of individuals even in scenarios where masks are worn. This paper presents a novel method for recognizing faces with masks. The proposed method integrates deep learning-based mask detection, landmark and oval face detection, and robust principal component analysis (RPCA) to accurately identify and authenticate individuals wearing masks. A pretrained ssd-MobileNetV2 model is utilized to detect the presence and location of masks on a face, while landmark and oval face detection are used to identify and extract important facial features. RPCA is applied to separate the occluded and non-occluded components of an image, making the method more reliable in identifying faces with masks. To further optimize the performance of the proposed method, the Gazelle Optimization Algorithm (GOA) is used to optimize both the KNN features and the number of k for KNN. Experimental results demonstrate that the proposed method outperforms existing methods in terms of accuracy and robustness to occlusion, achieving a recognition rate of 97%. This represents a significant improvement over existing methods for masked face recognition. The proposed method has the potential to be applied in a wide range of real-world scenarios, such as security systems, access control, and public health measures. The results of this study demonstrate that the integration of deep learning-based mask detection, landmark and oval face detection, and RPCA can improve the accuracy and reliability of masked face recognition, even in challenging and complex environments. The proposed method can be further improved and extended in future research to address other challenges in this field.
使用鲁棒 PCA 和 GOA 优化器的新型混合人脸识别方法
面罩的使用已在医疗保健、餐饮服务、建筑、制造、零售、酒店、交通、教育和公共安全等众多行业和专业中普及。为了克服这一挑战,近年来,面具人脸识别已成为一项重要技术。通过利用先进的算法和深度学习技术,蒙面人脸识别即使在佩戴面具的场景下也能准确识别和验证个人身份。本文提出了一种识别戴面具人脸的新方法。所提出的方法集成了基于深度学习的面具检测、地标和椭圆形人脸检测以及鲁棒主成分分析(RPCA),以准确识别和验证佩戴面具的个人。预训练的ssd-MobileNetV2模型用于检测面部是否存在面具及其位置,而地标和椭圆形面部检测则用于识别和提取重要的面部特征。RPCA 被用来分离图像中的遮挡和非遮挡部分,从而使该方法在识别带有面具的人脸时更加可靠。为了进一步优化拟议方法的性能,使用了瞪羚优化算法(GOA)来优化 KNN 特征和 KNN 的 k 数。实验结果表明,所提出的方法在准确性和对遮挡的鲁棒性方面都优于现有方法,识别率达到 97%。与现有的遮挡人脸识别方法相比,这是一个重大改进。所提出的方法可广泛应用于现实世界中的各种场景,如安全系统、门禁控制和公共卫生措施等。本研究的结果表明,基于深度学习的面具检测、地标和椭圆形人脸检测以及 RPCA 的集成可以提高蒙面人脸识别的准确性和可靠性,即使在具有挑战性的复杂环境中也是如此。在未来的研究中,可以进一步改进和扩展所提出的方法,以应对该领域的其他挑战。
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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