MASKED AND UNMASKED FACE RECOGNITION ON UNCONSTRAINED FACIAL IMAGES USING HAND-CRAFTED METHODS

Ali Torbati, Önsen Toygar
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Abstract

In this study, the face recognition task is applied on masked and unmasked faces using hand-crafted methods. Due to COVID-19 and masks, facial identification from unconstrained images became a hot topic. To avoid COVID-19, most people use masks outside. In many cases, typical facial recognition technology is useless. The majority of contemporary advanced face recognition methods are based on deep learning, which primarily relies on a huge number of training examples, however, masked face recognition may be investigated using hand-crafted approaches at a lower computing cost than using deep learning systems. A low-cost system is intended to be constructed for recognizing masked faces and compares its performance to that of face recognition systems that do not use masks. The proposed method fuses hand-crafted methods using feature-level fusion strategy. This study compares the performance of masked and unmasked face recognition systems. The experiments are undertaken on two publicly accessible datasets for masked face recognition: Masked Labeled Faces in the Wild (MLFW) and Cross-Age Labeled Faces in the Wild (CALFW). The best accuracy is achieved as 94.8% on MLFW dataset. The rest of the results on different train and test sets from CALFW and MLFW datasets are encouraging compared to the state-of-the-art models.
使用手工制作方法在无约束面部图像上进行屏蔽和非屏蔽人脸识别
在这项研究中,人脸识别任务采用手工制作的方法,适用于蒙面和未蒙面的人脸。由于 COVID-19 和面具,从无约束图像中进行人脸识别成为一个热门话题。为了避免 COVID-19,大多数人在户外使用面具。在许多情况下,典型的人脸识别技术毫无用处。当代大多数先进的人脸识别方法都是基于深度学习的,而深度学习主要依赖于大量的训练实例,然而,与使用深度学习系统相比,使用手工制作的方法可以以更低的计算成本研究面具人脸识别。我们打算构建一个低成本系统来识别蒙面人脸,并将其性能与不使用蒙面的人脸识别系统进行比较。所提出的方法利用特征级融合策略融合了手工制作的方法。本研究比较了带面具和不带面具人脸识别系统的性能。实验在两个公开的蒙面人脸识别数据集上进行:两个公开的蒙面人脸识别数据集分别是:野外蒙面标记人脸(MLFW)和野外跨年龄标记人脸(CALFW)。MLFW 数据集的准确率最高,达到 94.8%。与最先进的模型相比,在 CALFW 和 MLFW 数据集的不同训练集和测试集上取得的其他结果令人鼓舞。
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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