DocumentCode :
706211
Title :
A facial pattern recognition approach for detection of temporomandibular disorder
Author :
Ghodsi, M. ; Sanei, S. ; Hicks, Y. ; Lee, T. ; Dunne, S.
Author_Institution :
Centre of Digital Signal Process., Cardiff Univ., Cardiff, UK
fYear :
2007
fDate :
3-7 Sept. 2007
Firstpage :
1950
Lastpage :
1954
Abstract :
The aim of this study is to automatically classify individuals with temporomandibular disorder and healthy subjects. The process of automated classification requires measurement of features that can be used to distinguish between different classes. We used maximum Lyapunov exponents to measure the changes in the dynamics of the chewing pattern, the number of peaks in the normalized highpass filtered data to find the abnormalities in both opening and closing of mouth, normalized skewness and kurtosis to measure the distribution profile of the data samples, likelihood information to quantify the probability of the click events in either opening or closing process, and peak amplitude to measure how severe the abnormality is. Finally, using the above features together with Support vector machine to classify all subjects as belonging to individuals with TMD or not. The early experiments show encouraging results.
Keywords :
Lyapunov methods; face recognition; feature extraction; feature selection; high-pass filters; image classification; image sequences; learning (artificial intelligence); medical disorders; medical signal processing; probability; support vector machines; Lyapunov exponent-measured chewing pattern dynamics; Lyapunov exponent-measured filtered data peak; SVM-classified TMD patients; SVM-classified temporomandibular disorder patient; automated classification process; automatic patient classification; click event probability; data sample distribution profile measurement; facial pattern recognition approach; feature measurement; highpass filtered data; kurtosis; maximum Lyapunov exponent; mouth closing click event; mouth closing-associated abnormalities; mouth opening click event; mouth opening-associated abnormalities; normalized filtered data; normalized skewness; peak amplitude; severe abnormality measurement; support vector machine-classified temporomandibular disorder patient; temporomandibular disorder detection; temporomandibular disorder likelihood information measurement; temporomandibular disorder severity measurement; Chaos; Europe; Feature extraction; Image color analysis; Joints; Signal processing; Support vector machines; Temporomandibular disorder (TMD); maximum Lyapunov exponents; support vector machine (SVM);
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Signal Processing Conference, 2007 15th European
Conference_Location :
Poznan
Print_ISBN :
978-839-2134-04-6
Type :
conf
Filename :
7099148
Link To Document :
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