Hearing loss classification via stationary wavelet entropy and Biogeography-based optimization

Introduction: Sensorineural hearing loss is associated with many complications and needs timely detection and diagnosis. Objectives: Optimize the sensorineural hearing loss detection system to improve the accuracies of image detection. Method: The stationary wavelet entropy was used to extract the f...

Full description

Bibliographic Details
Main Authors: Chong Yao, Chaosheng Tan, Junding Sun
Format: Article
Language:English
Published: European Alliance for Innovation (EAI) 2020-08-01
Series:EAI Endorsed Transactions on e-Learning
Subjects:
Online Access:https://eudl.eu/pdf/10.4108/eai.7-8-2020.165964
id doaj-1ddf17ebc9db414eb4cc6f6dc955f9db
record_format Article
spelling doaj-1ddf17ebc9db414eb4cc6f6dc955f9db2020-11-25T03:51:34ZengEuropean Alliance for Innovation (EAI)EAI Endorsed Transactions on e-Learning2032-92532020-08-0161910.4108/eai.7-8-2020.165964Hearing loss classification via stationary wavelet entropy and Biogeography-based optimizationChong Yao0Chaosheng Tan1Junding Sun2Henan Polytechnic University, Jiaozuo, Henan, ChinaHenan Polytechnic University, Jiaozuo, Henan, ChinaHenan Polytechnic University, Jiaozuo, Henan, ChinaIntroduction: Sensorineural hearing loss is associated with many complications and needs timely detection and diagnosis. Objectives: Optimize the sensorineural hearing loss detection system to improve the accuracies of image detection. Method: The stationary wavelet entropy was used to extract the features of NMR images, the single hidden layer neural network was used for classification, and the BBO algorithm was used for optimization to avoid the dilemma of local optimum. We used two-level SWE as input to the classifier to enhance the identify and classify ability of hearing loss. Results: The results of 10-fold cross validation show that the accuracies of HC, LHL and RHL are 91.83± 3.09%, 92.67±2.38% and 91.17±2.61%, respectively. The overall accuracy is 91.89±0.70%. Conclusion: This model has good performance in detecting hearing loss.https://eudl.eu/pdf/10.4108/eai.7-8-2020.165964virtual private networkdesigning secure enterprise networksecure enterprise network
collection DOAJ
language English
format Article
sources DOAJ
author Chong Yao
Chaosheng Tan
Junding Sun
spellingShingle Chong Yao
Chaosheng Tan
Junding Sun
Hearing loss classification via stationary wavelet entropy and Biogeography-based optimization
EAI Endorsed Transactions on e-Learning
virtual private network
designing secure enterprise network
secure enterprise network
author_facet Chong Yao
Chaosheng Tan
Junding Sun
author_sort Chong Yao
title Hearing loss classification via stationary wavelet entropy and Biogeography-based optimization
title_short Hearing loss classification via stationary wavelet entropy and Biogeography-based optimization
title_full Hearing loss classification via stationary wavelet entropy and Biogeography-based optimization
title_fullStr Hearing loss classification via stationary wavelet entropy and Biogeography-based optimization
title_full_unstemmed Hearing loss classification via stationary wavelet entropy and Biogeography-based optimization
title_sort hearing loss classification via stationary wavelet entropy and biogeography-based optimization
publisher European Alliance for Innovation (EAI)
series EAI Endorsed Transactions on e-Learning
issn 2032-9253
publishDate 2020-08-01
description Introduction: Sensorineural hearing loss is associated with many complications and needs timely detection and diagnosis. Objectives: Optimize the sensorineural hearing loss detection system to improve the accuracies of image detection. Method: The stationary wavelet entropy was used to extract the features of NMR images, the single hidden layer neural network was used for classification, and the BBO algorithm was used for optimization to avoid the dilemma of local optimum. We used two-level SWE as input to the classifier to enhance the identify and classify ability of hearing loss. Results: The results of 10-fold cross validation show that the accuracies of HC, LHL and RHL are 91.83± 3.09%, 92.67±2.38% and 91.17±2.61%, respectively. The overall accuracy is 91.89±0.70%. Conclusion: This model has good performance in detecting hearing loss.
topic virtual private network
designing secure enterprise network
secure enterprise network
url https://eudl.eu/pdf/10.4108/eai.7-8-2020.165964
work_keys_str_mv AT chongyao hearinglossclassificationviastationarywaveletentropyandbiogeographybasedoptimization
AT chaoshengtan hearinglossclassificationviastationarywaveletentropyandbiogeographybasedoptimization
AT jundingsun hearinglossclassificationviastationarywaveletentropyandbiogeographybasedoptimization
_version_ 1724486900480212992