基于多图卷积网络的蒙面检测

Alanoud Alguzo, A. Alzu’bi, Firas AlBalas
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引用次数: 11

摘要

在疫情中,如当前的COVID-19大流行,戴口罩是保护人们生命的最有效做法之一。这将成为一种长期的日常生活习惯,特别是在公共场所。因此,需要提供一种高效的人脸检测方法来帮助处理戴口罩的人受到监控的异常情况。在本文中,我们提出了一种基于多图卷积网络(MGCN)的深度学习模型来准确检测戴口罩的人。与传统的GCNs不同,所提出的模型包括许多卷积滤波器来产生多图结构,其中我们使用4D facet张量作为输入函数和收敛层来捕获多个面部表情。这种多图版本的光谱卷积变换提取的面部轮廓,并使用图的行和列特征值概括图像频率。所提出的结构简单而高效,具有多层结构,包括多图卷积、最大池化、dropout和softmax。我们在公开可用的真实世界屏蔽人脸数据集(RWMFD)上评估了屏蔽人脸检测的性能。实验结果表明,该模型的准确率为97.9%,证明了该模型在检测戴口罩人员方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Masked Face Detection using Multi-Graph Convolutional Networks
In epidemic situations, as in the current COVID-19 pandemic, wearing face-masks is one of the most effective practices imposed to protect people lives. This will be one of the daily-life routines for a prolonged period, especially in public areas. Therefore, there is a demand to provide an efficient face detection method to help in dealing with such abnormal situations where people wearing masks are under monitoring. In this paper, we propose a deep learning model based on multi-graph convolutional networks (MGCN) to accurately detect people wearing masks. Unlike conventional GCNs, the proposed model includes many convolutional filters to produce multi-graph structure in which we use a 4D facet tensor as an input function and a convergence layer to capture multiple face expressions. This multi-graph version of spectral convolution transforms the extracted facial relief and generalizes image frequencies using graph rows and columns eigenvalues. The proposed architecture is simple yet efficient with several layers, including multi-graph convolutional, max pooling, dropout and softmax. We evaluate the performance of masked-faces detection on the publicly available real-world masked face dataset (RWMFD). The experimental results show an accuracy of 97.9%, which proves the efficiency of our proposed model in detecting people wearing facemasks.
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