Face Recognition Method Based on Edge-Cloud Collaboration

Face recognition is widely used in daily life such as shopping,security check,travel,payment and work attendance.Face recognition systems need strong computing power and large storage space,so face images that need to be recognized are usually transmitted to the cloud platform through the network.Du...

Full description

Bibliographic Details
Main Author: WEI Qin, LI Ying-jiao, LOU Ping, YAN Jun-wei, HU Ji-wei
Format: Article
Language:zho
Published: Editorial office of Computer Science 2022-05-01
Series:Jisuanji kexue
Subjects:
Online Access:https://www.jsjkx.com/fileup/1002-137X/PDF/1002-137X-2022-49-5-71.pdf
_version_ 1797845093506351104
author WEI Qin, LI Ying-jiao, LOU Ping, YAN Jun-wei, HU Ji-wei
author_facet WEI Qin, LI Ying-jiao, LOU Ping, YAN Jun-wei, HU Ji-wei
author_sort WEI Qin, LI Ying-jiao, LOU Ping, YAN Jun-wei, HU Ji-wei
collection DOAJ
description Face recognition is widely used in daily life such as shopping,security check,travel,payment and work attendance.Face recognition systems need strong computing power and large storage space,so face images that need to be recognized are usually transmitted to the cloud platform through the network.Due to the problems of network coverage,congestion and delay,face re-cognition systems are difficult to meet the needs of actual application,and the user experience is poor.Aiming at the problems in face recognition,a face recognition method based on edge-cloud collaboration is proposed.This method combines the processing ability of cloud computing and the real-time performance of edge computing,so that face recognition systems are not constrained by the network status,and its application is more extensive and the user experience is better.In the cloud,the LResNet feature extraction method is proposed to improve the ResNet34 network structure,and the ArcFace face loss function is used to supervise the training process,so that the network can learn more face angle features.At the edge,due to the limited computing resources and storage resources,a SResNet feature extraction method is proposed.Deep separable convolution is used to lighten the LResNet network structure,and it has greatly reduced network parameters and computation.The face recognition experiment on edge-cloud collaboration shows that the system can recognize faces in real time with a high accuracy rate under any network status.
first_indexed 2024-04-09T17:32:57Z
format Article
id doaj.art-d42d3144aed34de3be78e4a57e3998ce
institution Directory Open Access Journal
issn 1002-137X
language zho
last_indexed 2024-04-09T17:32:57Z
publishDate 2022-05-01
publisher Editorial office of Computer Science
record_format Article
series Jisuanji kexue
spelling doaj.art-d42d3144aed34de3be78e4a57e3998ce2023-04-18T02:35:57ZzhoEditorial office of Computer ScienceJisuanji kexue1002-137X2022-05-01495717710.11896/jsjkx.210300222Face Recognition Method Based on Edge-Cloud CollaborationWEI Qin, LI Ying-jiao, LOU Ping, YAN Jun-wei, HU Ji-wei0School of Information Engineering,Wuhan University of Technology,Wuhan 430070,ChinaFace recognition is widely used in daily life such as shopping,security check,travel,payment and work attendance.Face recognition systems need strong computing power and large storage space,so face images that need to be recognized are usually transmitted to the cloud platform through the network.Due to the problems of network coverage,congestion and delay,face re-cognition systems are difficult to meet the needs of actual application,and the user experience is poor.Aiming at the problems in face recognition,a face recognition method based on edge-cloud collaboration is proposed.This method combines the processing ability of cloud computing and the real-time performance of edge computing,so that face recognition systems are not constrained by the network status,and its application is more extensive and the user experience is better.In the cloud,the LResNet feature extraction method is proposed to improve the ResNet34 network structure,and the ArcFace face loss function is used to supervise the training process,so that the network can learn more face angle features.At the edge,due to the limited computing resources and storage resources,a SResNet feature extraction method is proposed.Deep separable convolution is used to lighten the LResNet network structure,and it has greatly reduced network parameters and computation.The face recognition experiment on edge-cloud collaboration shows that the system can recognize faces in real time with a high accuracy rate under any network status.https://www.jsjkx.com/fileup/1002-137X/PDF/1002-137X-2022-49-5-71.pdfedge-cloud collaboration|face recognition|resnet|arcface|deep separable convolution
spellingShingle WEI Qin, LI Ying-jiao, LOU Ping, YAN Jun-wei, HU Ji-wei
Face Recognition Method Based on Edge-Cloud Collaboration
Jisuanji kexue
edge-cloud collaboration|face recognition|resnet|arcface|deep separable convolution
title Face Recognition Method Based on Edge-Cloud Collaboration
title_full Face Recognition Method Based on Edge-Cloud Collaboration
title_fullStr Face Recognition Method Based on Edge-Cloud Collaboration
title_full_unstemmed Face Recognition Method Based on Edge-Cloud Collaboration
title_short Face Recognition Method Based on Edge-Cloud Collaboration
title_sort face recognition method based on edge cloud collaboration
topic edge-cloud collaboration|face recognition|resnet|arcface|deep separable convolution
url https://www.jsjkx.com/fileup/1002-137X/PDF/1002-137X-2022-49-5-71.pdf
work_keys_str_mv AT weiqinliyingjiaoloupingyanjunweihujiwei facerecognitionmethodbasedonedgecloudcollaboration