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

Audio Event Classification in Threatening Conditions at Surveillance System using Genetic Regulatory Network

http://hdl.handle.net/20.500.12678/0000007754
http://hdl.handle.net/20.500.12678/0000007754
63b52017-0ddf-43d3-ab98-b95b2712183b
6024076a-b9b8-4bf7-8f9c-858eb1362c36
None
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Audio Audio Event Classification in Threatening Conditions at Surveillance System using Genetic Regulatory Network.pdf (93 KB)
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Conference paper
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Publication
Title
Title Audio Event Classification in Threatening Conditions at Surveillance System using Genetic Regulatory Network
Language en
Publication date 2011-09-09
Authors
Tin Ei Kyaw
Description
The threatening environments in acoustic surveillance system at important public places in a noisy environment deals with audio events detection is essential and useful application. At surveillance systems aiming to detect abnormal situations based on visual clues while, in some situations, it may be easier to detect and classify events using the audio information. Audio events classification for threatening environment through Genetic Regulatory Network (GRN) is considered. GRN is adopted as classification framework and greatly reduced input dimensions. Thus using the results from GRN framework as inputs for Support Vector Machine (SVM) can correctly classify audio events such as gunshot and explosion with low computational time and complexity. SVM applies as novel discriminative approach for dissimilarity measure in order to address a supervised sound-classification task. Selecting GRN in event detection system can not only reduces cost and effort but also aims to obtain high performance and accuracy in varying nature of environments.
Conference papers
ICSEC
2011-09-09
Proceeding of 15th International Computer Science and Engineering Conference (ICSEC 2011)
Bangkok, Thailand
http://icsec2011.cpe.ku.ac.th
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