Accelerometer based motion activity recognition
Diabetes diagnosis and condition surveillance are two main challenges in treatment of this disease. One of the methods is to use plantar pressure which will show different pattern according to different disease conditions of diabetes. One problem of this approach is identifying the activity of the p...
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sg-ntu-dr.10356-760282023-07-04T15:56:17Z Accelerometer based motion activity recognition Guo, Kaitong Goh Wang Ling School of Electrical and Electronic Engineering DRNTU::Engineering::Electrical and electronic engineering Diabetes diagnosis and condition surveillance are two main challenges in treatment of this disease. One of the methods is to use plantar pressure which will show different pattern according to different disease conditions of diabetes. One problem of this approach is identifying the activity of the patients since different activity may naturally result in various plantar pressures. This dissertation aims at solving this problem by using accelerometer data to recognize human body activities which include walking, jogging, jumping, going upstairs and going downstairs. Beginning with the preliminary data collection work, several approaches to process raw signals and classify different activities from the acceleration data recorded by accelerometers are proposed and tested by this dissertation, where PCA feature extraction method, time and frequency analysis, SVM classifier and RBF Neural Network are involved. Besides, a window segmentation method and the classification strategy based on small windows are introduced. By combining and doing experiments on these methods, PCA feature extraction method and SVM classifier are proven to have the best performances, which can achieve a classification accuracy up to 92%. While the time and frequency domain features, which has been applied by most of the existing works, show poor performances under the experiment environment in this dissertation. Master of Science (Computer Control and Automation) 2018-09-18T07:43:38Z 2018-09-18T07:43:38Z 2018 Thesis http://hdl.handle.net/10356/76028 en 57 p. application/pdf |
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DRNTU::Engineering::Electrical and electronic engineering Guo, Kaitong Accelerometer based motion activity recognition |
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Diabetes diagnosis and condition surveillance are two main challenges in treatment of this disease. One of the methods is to use plantar pressure which will show different pattern according to different disease conditions of diabetes. One problem of this approach is identifying the activity of the patients since different activity may naturally result in various plantar pressures. This dissertation aims at solving this problem by using accelerometer data to recognize human body activities which include walking, jogging, jumping, going upstairs and going downstairs. Beginning with the preliminary data collection work, several approaches to process raw signals and classify different activities from the acceleration data recorded by accelerometers are proposed and tested by this dissertation, where PCA feature extraction method, time and frequency analysis, SVM classifier and RBF Neural Network are involved. Besides, a window segmentation method and the classification strategy based on small windows are introduced. By combining and doing experiments on these methods, PCA feature extraction method and SVM classifier are proven to have the best performances, which can achieve a classification accuracy up to 92%. While the time and frequency domain features, which has been applied by most of the existing works, show poor performances under the experiment environment in this dissertation. |
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Goh Wang Ling |
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Goh Wang Ling Guo, Kaitong |
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Theses and Dissertations |
author |
Guo, Kaitong |
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Guo, Kaitong |
title |
Accelerometer based motion activity recognition |
title_short |
Accelerometer based motion activity recognition |
title_full |
Accelerometer based motion activity recognition |
title_fullStr |
Accelerometer based motion activity recognition |
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Accelerometer based motion activity recognition |
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accelerometer based motion activity recognition |
publishDate |
2018 |
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http://hdl.handle.net/10356/76028 |
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1772828506667876352 |