Universiti Teknologi Malaysia Institutional Repository

Motion classification using proposed principle component analysis hybrid K-Means clustering

Ching, Yee Yong and Sudirman, Rubita and Mahmood, Nasrul Humaimi and Kim, Mey Chew (2013) Motion classification using proposed principle component analysis hybrid K-Means clustering. Engineering, 5 (n/a). pp. 25-30. ISSN 2250-3305

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Abstract

This study investigates and acts as a trial clinical outcome for human motion and behaviour analysis in consensus of health related quality of life in Malaysia. The proposed technique was developed to analyze and access the quality of human motion that can be used in hospitals, clinics and human motion researches. It aims to establish how to wide-spread the quality of life effects of human motion. Reliability and validity are needed to facilitate subject outcomes. An experiment was set up in a laboratory environment with conjunction of analyzing human motion and its behaviour. Five classifiers and algorithms were used to recognize and classify the motion patterns. The proposed PCA-K-Means clus-tering took 0.058 seconds for classification process. Resubstitution error for the proposed technique was 0.002 and achieved 94.67% of true positive for total confusion matrix of the classification accuracy. The proposed clustering algo-rithm achieved higher speed of processing, higher accuracy of performance and reliable cross validation error.

Item Type:Article
Uncontrolled Keywords:accelerometer, gyroscope, fuzzy, bayes, decision tree
Subjects:T Technology > TK Electrical engineering. Electronics Nuclear engineering
Divisions:Electrical Engineering
ID Code:40927
Deposited By: Liza Porijo
Deposited On:20 Aug 2014 08:19
Last Modified:15 Feb 2017 06:39

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