DocumentCode
959373
Title
Support Vector Machine Applications in Terahertz Pulsed Signals Feature Sets
Author
Yin, Xiaoxia ; Ng, Brian W H ; Fischer, Bernd M. ; Ferguson, Bradley ; Abbott, Derek
Author_Institution
Adelaide Univ., Adelaide
Volume
7
Issue
12
fYear
2007
Firstpage
1597
Lastpage
1608
Abstract
In the past decade, terahertz radiation (T-rays) have been extensively applied within the fields of industrial and biomedical imaging, owing to their noninvasive property. Support vector machine (SVM) learning algorithms are sufficiently powerful to detect patterns hidden inside noisy biomedical measurements. This paper introduces a frequency orientation component method to extract T-ray feature sets for the application of two- and multiclass classification using SVMs. Effective discriminations of ribonucleic acid (RNA) samples and various powdered substances are demonstrated. The development of this method has become important in T-ray chemical sensing and image processing, which results in enhanced detectability useful for many applications, such as quality control, security detection and clinic diagnosis.
Keywords
biomedical imaging; feature extraction; image classification; medical image processing; organic compounds; submillimetre wave imaging; support vector machines; RNA sample; T-ray chemical sensing; biomedical measurements; frequency orientation component method; image processing; learning algorithms; ribonucleic acid sample; support vector machine; terahertz pulsed signals feature sets; Biomedical imaging; Biomedical measurements; Chemical processes; Feature extraction; Frequency; Image processing; Machine learning; RNA; Support vector machine classification; Support vector machines; Pairwise classification; ribonucleic acid (RNA); support vector machines (SVMs); terahertz; terahertz time- domain spectroscopy;
fLanguage
English
Journal_Title
Sensors Journal, IEEE
Publisher
ieee
ISSN
1530-437X
Type
jour
DOI
10.1109/JSEN.2007.908243
Filename
4373311
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