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  1. Myanmar Institute of Information Technology
  1. Myanmar Institute of Information Technology
  2. Faculty of Computer Science

A Comparative Study using Two Classifiers for Hazardous Audio Event Classification

http://hdl.handle.net/20.500.12678/0000007753
http://hdl.handle.net/20.500.12678/0000007753
ba309fa7-385b-4b25-9418-929ca2942b7c
82f83876-815b-4f1a-a630-ca9a50e08ce9
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A A Comparative Study using Two Classifiers for Hazardous Audio Event Classification.pdf (156 KB)
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Conference paper
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Publication
Title
Title A Comparative Study using Two Classifiers for Hazardous Audio Event Classification
Language en
Publication date 2012-02-28
Authors
Tin Ei Kyaw
Description
The hazardous acoustic event classification system is presented and tested in threatening environments. The system is based on classified with Support Vector Machine (SVM), k Nearest Neighbor (kNN) and modeled with Genetic Regulatory Network (GRN). GRN is adopted as classification framework and greatly reduced input feature dimensions. Setting the results that have already reduced the inputs dimensions from GRN framework as inputs for SVM and kNN can correctly classify audio event with low computational time and cost. Comparative and classification tests are carried out using three kinds of input sets with SVM and kNN classifier. These input sets are original feature set, reduced dimension feature set by GRN and unique feature set. SVM applies as novel discriminative approach for dissimilarity measure in order to address a supervised sound-classification task and then shows good performance in the task of acoustic event classification. Selecting GRN in event classification system can not only reduces cost and effort but also aims to obtain high performance and accuracy in varying nature of environments.
Keywords
Acoustic Surveillance, Audio Features, Audio events, Classification tasks, k Nearest neighbor, Genetic Regulatory Network, Support Vector Machine.
Conference papers
ICCA
2012-02-28
Proceeding of 10th International Conference on Computer Application (ICCA 2012)
Yangon, Myanmar
http://onlineresource.ucsy.edu.mm/handle/123456789/2449
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