Sound based wheeze signal detection using ELM algorithm

Wheezing is a prevalent symptom found in most patients suffering from obstructive respiratory disease such as asthma. Traditional methods used in identifying wheezes are mostly manual and heavily rely on the physician subjective judgment. Not only do such methods prove to be time-consuming and ineff...

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主要作者: Udomsangpetch, Karn
其他作者: Huang Guangbin
格式: Final Year Project
語言:English
出版: 2012
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在線閱讀:http://hdl.handle.net/10356/49708
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spelling sg-ntu-dr.10356-497082023-07-07T16:26:32Z Sound based wheeze signal detection using ELM algorithm Udomsangpetch, Karn Huang Guangbin Ser Wee School of Electrical and Electronic Engineering DRNTU::Engineering::Electrical and electronic engineering::Electronic systems::Signal processing Wheezing is a prevalent symptom found in most patients suffering from obstructive respiratory disease such as asthma. Traditional methods used in identifying wheezes are mostly manual and heavily rely on the physician subjective judgment. Not only do such methods prove to be time-consuming and inefficient, but they are also inaccurate at times due to human errors and subjectivity. Various automated methods were introduced for the past few decades but due to irregularities in the occurrence and nature of wheezes, many difficulties were encountered. In order to find complex relationships among the data and create an adaptable prediction model, Extreme Learning Machine (ELM), a type of learning algorithm for artificial neural network, is applied to the breathing samples obtained from real patient. By forming a suitable training data set for ELM to learn from after a careful analysis and observation of the waveforms in time and frequency domains, the testing samples can be classified into wheezes signal and normal breathing sound with top sensitivity of 72.60% and specificity of 84.80%. Another method using support vector machine (SVM) also yields roughly the same result of 70% in sensitivity and 80% in specificity. Further improvement needs to be done on the formation of the training data to increase the accuracy of the machine classification. Bachelor of Engineering 2012-05-23T06:19:35Z 2012-05-23T06:19:35Z 2012 2012 Final Year Project (FYP) http://hdl.handle.net/10356/49708 en Nanyang Technological University 66 p. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic DRNTU::Engineering::Electrical and electronic engineering::Electronic systems::Signal processing
spellingShingle DRNTU::Engineering::Electrical and electronic engineering::Electronic systems::Signal processing
Udomsangpetch, Karn
Sound based wheeze signal detection using ELM algorithm
description Wheezing is a prevalent symptom found in most patients suffering from obstructive respiratory disease such as asthma. Traditional methods used in identifying wheezes are mostly manual and heavily rely on the physician subjective judgment. Not only do such methods prove to be time-consuming and inefficient, but they are also inaccurate at times due to human errors and subjectivity. Various automated methods were introduced for the past few decades but due to irregularities in the occurrence and nature of wheezes, many difficulties were encountered. In order to find complex relationships among the data and create an adaptable prediction model, Extreme Learning Machine (ELM), a type of learning algorithm for artificial neural network, is applied to the breathing samples obtained from real patient. By forming a suitable training data set for ELM to learn from after a careful analysis and observation of the waveforms in time and frequency domains, the testing samples can be classified into wheezes signal and normal breathing sound with top sensitivity of 72.60% and specificity of 84.80%. Another method using support vector machine (SVM) also yields roughly the same result of 70% in sensitivity and 80% in specificity. Further improvement needs to be done on the formation of the training data to increase the accuracy of the machine classification.
author2 Huang Guangbin
author_facet Huang Guangbin
Udomsangpetch, Karn
format Final Year Project
author Udomsangpetch, Karn
author_sort Udomsangpetch, Karn
title Sound based wheeze signal detection using ELM algorithm
title_short Sound based wheeze signal detection using ELM algorithm
title_full Sound based wheeze signal detection using ELM algorithm
title_fullStr Sound based wheeze signal detection using ELM algorithm
title_full_unstemmed Sound based wheeze signal detection using ELM algorithm
title_sort sound based wheeze signal detection using elm algorithm
publishDate 2012
url http://hdl.handle.net/10356/49708
_version_ 1772826807467245568