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使用深度卷积神经网络和人类活动识别图像增强新冠病毒追踪应用程序

Enhancing COVID-19 tracking apps with human activity recognition using a deep convolutional neural network and HAR-images.

作者信息

D'Angelo Gianni, Palmieri Francesco

机构信息

Department of Computer Science, University of Salerno, Fisciano, Salerno Italy.

出版信息

Neural Comput Appl. 2023;35(19):13861-13877. doi: 10.1007/s00521-021-05913-y. Epub 2021 Mar 30.

Abstract

With the emergence of COVID-19, mobile health applications have increasingly become crucial in contact tracing, information dissemination, and pandemic control in general. Apps warn users if they have been close to an infected person for sufficient time, and therefore potentially at risk. The distance measurement accuracy heavily affects the probability estimation of being infected. Most of these applications make use of the electromagnetic field produced by Bluetooth Low Energy technology to estimate the distance. Nevertheless, radio interference derived from numerous factors, such as crowding, obstacles, and user activity can lead to wrong distance estimation, and, in turn, to wrong decisions. Besides, most of the social distance-keeping criteria recognized worldwide plan to keep a different distance based on the activity of the person and on the surrounding environment. In this study, in order to enhance the performance of the COVID-19 tracking apps, a human activity classifier based on Convolutional Deep Neural Network is provided. In particular, the raw data coming from the accelerometer sensor of a smartphone are arranged to form an image including several channels (HAR-Image), which is used as fingerprints of the in-progress activity that can be used as an additional input by tracking applications. Experimental results, obtained by analyzing real data, have shown that the HAR-Images are effective features for human activity recognition. Indeed, the results on the k-fold cross-validation and obtained by using a real dataset achieved an accuracy very close to 100%.

摘要

随着新冠疫情的出现,移动健康应用在接触者追踪、信息传播以及总体疫情防控中变得愈发关键。如果用户与感染者有足够长的近距离接触时间,应用会发出警告,提示用户可能面临感染风险。距离测量的准确性严重影响感染概率的估计。这些应用大多利用低功耗蓝牙技术产生的电磁场来估计距离。然而,诸如人群拥挤、障碍物和用户活动等众多因素导致的无线电干扰,可能会造成距离估计错误,进而导致错误决策。此外,全球公认的大多数社交距离保持标准都计划根据个人活动和周围环境保持不同的距离。在本研究中,为了提高新冠疫情追踪应用的性能,提供了一种基于卷积深度神经网络的人类活动分类器。具体而言,来自智能手机加速度计传感器的原始数据被整理成包含多个通道的图像(HAR-图像),用作正在进行活动的指纹,可供追踪应用作为额外输入使用。通过分析真实数据获得的实验结果表明,HAR-图像是用于人类活动识别的有效特征。实际上,在k折交叉验证中以及使用真实数据集所获得的结果,准确率非常接近100%。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/54bf/8009079/d53dcf83a7b1/521_2021_5913_Fig1_HTML.jpg

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