Detecting Facial Images In Public With And Without Masks Using VGG And FR-TSVM Models

Hangkai Wang, C. Lursinsap
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引用次数: 1

Abstract

Since 2019, Covid-19 has become a common problem affecting all mankind. The disease has successfully spread all over the world. Wearing a mask can practically protect the infection. Thus, detecting people wearing and not wearing masks in public is essential. However, there is still some room to improve detection accuracy of the present methods. In this paper, the transfer learning model and FR-TSVM model are used to study the latest data of pneumonia epidemic situation in Covid-19. First, a data set of 12,000 facial images wearing masks and not wearing masks in public was collected for training, testing, and validation. The pictures will be put into the improved VGG model. Then the structure of VGG model was used to extract the features of images. These features were trained by FR-TSVM with fuzzy concept included. This approach can achieve 95.5% accuracy, and it is also higher than the detection results of other methods.
基于VGG和FR-TSVM模型的公共场合面部图像检测
2019年以来,新冠肺炎疫情已成为影响全人类的共同问题。这种疾病已成功地蔓延到全世界。戴口罩实际上可以防止感染。因此,在公共场合检测戴口罩和不戴口罩的人至关重要。然而,现有方法的检测精度仍有一定的提高空间。本文采用迁移学习模型和FR-TSVM模型对新冠肺炎疫情的最新数据进行研究。首先,收集了1.2万张在公共场合戴口罩和不戴口罩的面部图像数据集,用于训练、测试和验证。这些图片将被放入改进的VGG模型中。然后利用VGG模型的结构提取图像的特征。这些特征通过包含模糊概念的FR-TSVM进行训练。该方法可以达到95.5%的准确率,也高于其他方法的检测结果。
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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