Clustering-Based Emotion Recognition Micro-Service Cloud Framework for Mobile Computing

In a situation where life becomes more stressful and challenging, people feel compelled to be more concerned about their mental situation. Different emotional statuses are external reactions to different mental states. Therefore, researchers always identify people's mental situation by monitori...

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Main Authors: Ping Wang, Luobing Dong, yueshen xu, Wei Liu, Ningning Jing
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9031338/
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author Ping Wang
Luobing Dong
yueshen xu
Wei Liu
Ningning Jing
author_facet Ping Wang
Luobing Dong
yueshen xu
Wei Liu
Ningning Jing
author_sort Ping Wang
collection DOAJ
description In a situation where life becomes more stressful and challenging, people feel compelled to be more concerned about their mental situation. Different emotional statuses are external reactions to different mental states. Therefore, researchers always identify people's mental situation by monitoring their real-time emotions. At the same time, due to the availability of built-in sensors in a smartphone, applications that can identify real-time emotions of mobile users are constantly emerging. However, compared to most emotion recognition algorithms, computing resources and battery life in mobile phones are always limited. This makes accuracy and latency of these applications are unsatisfactory. In this paper, we propose a micro-service platform for mobile emotion recognition application developers (MSPMERAD) which can supply high performance. First, a classifier fusion emotion recognition algorithm is proposed by using a dynamic adaptive fusion strategy. Second, this new algorithm is encapsulated into a micro-service. With other affiliated micro-services such as data uploading, preprocessing, etc., developers can ignore the implementation of the emotion recognition algorithm and just focus on how to collect sensor data and interact with users. The accuracy and latency of one application based on the MSPMERAD are compared with another application that is implemented using a locale emotion recognition algorithm. Experiments based on the daily behavior data of 50 student volunteers show that the application based on our platform has higher recognition accuracy with a more reasonable time.
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spelling doaj.art-b0ca0c2c728740aeadeb7f868e1117922022-12-21T20:19:29ZengIEEEIEEE Access2169-35362020-01-018496954970410.1109/ACCESS.2020.29798989031338Clustering-Based Emotion Recognition Micro-Service Cloud Framework for Mobile ComputingPing Wang0Luobing Dong1https://orcid.org/0000-0003-3185-4781yueshen xu2Wei Liu3Ningning Jing4National Key Laboratory of Science and Technology on ATR, College of Electronic Science, National University of Defense Technology, Changsha, ChinaSchool of Computer Science and Technology, Xidian University, Xi’an, ChinaSchool of Computer Science and Technology, Xidian University, Xi’an, ChinaSchool of Computer Science and Technology, Xidian University, Xi’an, ChinaSchool of Computer Science and Technology, Xidian University, Xi’an, ChinaIn a situation where life becomes more stressful and challenging, people feel compelled to be more concerned about their mental situation. Different emotional statuses are external reactions to different mental states. Therefore, researchers always identify people's mental situation by monitoring their real-time emotions. At the same time, due to the availability of built-in sensors in a smartphone, applications that can identify real-time emotions of mobile users are constantly emerging. However, compared to most emotion recognition algorithms, computing resources and battery life in mobile phones are always limited. This makes accuracy and latency of these applications are unsatisfactory. In this paper, we propose a micro-service platform for mobile emotion recognition application developers (MSPMERAD) which can supply high performance. First, a classifier fusion emotion recognition algorithm is proposed by using a dynamic adaptive fusion strategy. Second, this new algorithm is encapsulated into a micro-service. With other affiliated micro-services such as data uploading, preprocessing, etc., developers can ignore the implementation of the emotion recognition algorithm and just focus on how to collect sensor data and interact with users. The accuracy and latency of one application based on the MSPMERAD are compared with another application that is implemented using a locale emotion recognition algorithm. Experiments based on the daily behavior data of 50 student volunteers show that the application based on our platform has higher recognition accuracy with a more reasonable time.https://ieeexplore.ieee.org/document/9031338/Classifier fusion methoddynamic adaptive fusion strategyemotion recognitionmicro-servicemobile users
spellingShingle Ping Wang
Luobing Dong
yueshen xu
Wei Liu
Ningning Jing
Clustering-Based Emotion Recognition Micro-Service Cloud Framework for Mobile Computing
IEEE Access
Classifier fusion method
dynamic adaptive fusion strategy
emotion recognition
micro-service
mobile users
title Clustering-Based Emotion Recognition Micro-Service Cloud Framework for Mobile Computing
title_full Clustering-Based Emotion Recognition Micro-Service Cloud Framework for Mobile Computing
title_fullStr Clustering-Based Emotion Recognition Micro-Service Cloud Framework for Mobile Computing
title_full_unstemmed Clustering-Based Emotion Recognition Micro-Service Cloud Framework for Mobile Computing
title_short Clustering-Based Emotion Recognition Micro-Service Cloud Framework for Mobile Computing
title_sort clustering based emotion recognition micro service cloud framework for mobile computing
topic Classifier fusion method
dynamic adaptive fusion strategy
emotion recognition
micro-service
mobile users
url https://ieeexplore.ieee.org/document/9031338/
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AT luobingdong clusteringbasedemotionrecognitionmicroservicecloudframeworkformobilecomputing
AT yueshenxu clusteringbasedemotionrecognitionmicroservicecloudframeworkformobilecomputing
AT weiliu clusteringbasedemotionrecognitionmicroservicecloudframeworkformobilecomputing
AT ningningjing clusteringbasedemotionrecognitionmicroservicecloudframeworkformobilecomputing