基于迁移学习的级联深度学习网络和新冠肺炎口罩识别。

IF 2.7 3区 计算机科学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS World Wide Web-Internet and Web Information Systems Pub Date : 2023-05-26 DOI:10.1007/s11280-023-01149-z
Fengyin Li, Xiaojiao Wang, Yuhong Sun, Tao Li, Junrong Ge
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引用次数: 0

摘要

新冠肺炎疫情至今仍在蔓延,给人类造成了巨大危害。商场和车站等公共场所入口处的系统应检查行人是否戴口罩。然而,行人经常戴着棉质口罩、围巾等通过系统检查。因此,检测系统不仅需要检查行人是否戴口罩,还需要检测口罩的类型。基于轻量级网络架构MobilenetV3,本文提出了一种基于迁移学习的级联深度学习网络,然后设计了一个基于级联深度学习的掩模识别系统。通过修改MobiletV3输出层的激活函数和模型的结构,获得了两个适合级联的MobiletV3网络。通过将迁移学习引入两个改进的MobileneV3网络和一个多任务卷积神经网络的训练过程,提前获得了网络模型的ImagNet底层参数,降低了模型的计算负载。级联深度学习网络由一个多任务卷积神经网络组成,该网络与这两个改进的MobileneV3网络级联。使用多任务卷积神经网络来检测图像中的人脸,并使用两个改进的MobilenetV3网络作为骨干网络来提取掩模的特征。与级联前改进的MobilenetV3神经网络的分类结果相比,级联学习网络的分类精度提高了7%,可以看出级联网络的优异性能。
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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Transfer learning based cascaded deep learning network and mask recognition for COVID-19.

The COVID-19 is still spreading today, and it has caused great harm to human beings. The system at the entrance of public places such as shopping malls and stations should check whether pedestrians are wearing masks. However, pedestrians often pass the system inspection by wearing cotton masks, scarves, etc. Therefore, the detection system not only needs to check whether pedestrians are wearing masks, but also needs to detect the type of masks. Based on the lightweight network architecture MobilenetV3, this paper proposes a cascaded deep learning network based on transfer learning, and then designs a mask recognition system based on the cascaded deep learning network. By modifying the activation function of the MobilenetV3 output layer and the structure of the model, two MobilenetV3 networks suitable for cascading are obtained. By introducing transfer learning into the training process of two modified MobilenetV3 networks and a multi-task convolutional neural network, the ImagNet underlying parameters of the network models are obtained in advance, which reduces the computational load of the models. The cascaded deep learning network consists of a multi-task convolutional neural network cascaded with these two modified MobilenetV3 networks. A multi-task convolutional neural network is used to detect faces in images, and two modified MobilenetV3 networks are used as the backbone network to extract the features of masks. After comparing with the classification results of the modified MobilenetV3 neural network before cascading, the classification accuracy of the cascading learning network is improved by 7%, and the excellent performance of the cascading network can be seen.

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来源期刊
World Wide Web-Internet and Web Information Systems
World Wide Web-Internet and Web Information Systems 工程技术-计算机:软件工程
CiteScore
7.30
自引率
10.80%
发文量
131
审稿时长
6 months
期刊介绍: World Wide Web: Internet and Web Information Systems (WWW) is an international, archival, peer-reviewed journal which covers all aspects of the World Wide Web, including issues related to architectures, applications, Internet and Web information systems, and communities. The purpose of this journal is to provide an international forum for researchers, professionals, and industrial practitioners to share their rapidly developing knowledge and report on new advances in Internet and web-based systems. The journal also focuses on all database- and information-system topics that relate to the Internet and the Web, particularly on ways to model, design, develop, integrate, and manage these systems. Appearing quarterly, the journal publishes (1) papers describing original ideas and new results, (2) vision papers, (3) reviews of important techniques in related areas, (4) innovative application papers, and (5) progress reports on major international research projects. Papers published in the WWW journal deal with subjects directly or indirectly related to the World Wide Web. The WWW journal provides timely, in-depth coverage of the most recent developments in the World Wide Web discipline to enable anyone involved to keep up-to-date with this dynamically changing technology.
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