Watch-based hand activity recognition through machine learning
To discover a novel and innovative way to interact with smartwatch beyond the tiny touchscreen, my Final Year Project (FYP) focus on recognizing the hand activities of people drawing numbers 0-9 in the air while wearing smartwatch on their hand. A 2-stage hand activity recognition system is proposed...
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2018
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sg-ntu-dr.10356-739962023-03-03T20:52:51Z Watch-based hand activity recognition through machine learning Zhao, Qingmei Pan Jialin, Sinno School of Computer Science and Engineering DRNTU::Engineering::Computer science and engineering::Computing methodologies::Pattern recognition To discover a novel and innovative way to interact with smartwatch beyond the tiny touchscreen, my Final Year Project (FYP) focus on recognizing the hand activities of people drawing numbers 0-9 in the air while wearing smartwatch on their hand. A 2-stage hand activity recognition system is proposed and uses Machine Learning techniques to classify the different hand activities from the time series signals recorded from the sensors embedded on the smartwatch. To evaluate the performance of recognition system, I have collected hand activity data from 92 different people and engineered critical and essential features from the sensor data to identify activities. The adopted 2-stage hand activity recognition system with a deep convolutional neural networks (CNN) models which could achieve the accuracy of 94.3\%. The outstanding performance of the recognition system with CNN models has been verified by the experiments on training different Machine Learning models with the same set of features. Lastly, a hand-free standalone Android Watch App is developed to load the pre-trained models and demonstrate the hand activity recognition. Bachelor of Engineering (Computer Science) 2018-04-23T05:00:43Z 2018-04-23T05:00:43Z 2018 Final Year Project (FYP) http://hdl.handle.net/10356/73996 en Nanyang Technological University 54 p. application/pdf |
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DRNTU::Engineering::Computer science and engineering::Computing methodologies::Pattern recognition Zhao, Qingmei Watch-based hand activity recognition through machine learning |
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To discover a novel and innovative way to interact with smartwatch beyond the tiny touchscreen, my Final Year Project (FYP) focus on recognizing the hand activities of people drawing numbers 0-9 in the air while wearing smartwatch on their hand. A 2-stage hand activity recognition system is proposed and uses Machine Learning techniques to classify the different hand activities from the time series signals recorded from the sensors embedded on the smartwatch. To evaluate the performance of recognition system, I have collected hand activity data from 92 different people and engineered critical and essential features from the sensor data to identify activities. The adopted 2-stage hand activity recognition system with a deep convolutional neural networks (CNN) models which could achieve the accuracy of 94.3\%. The outstanding performance of the recognition system with CNN models has been verified by the experiments on training different Machine Learning models with the same set of features. Lastly, a hand-free standalone Android Watch App is developed to load the pre-trained models and demonstrate the hand activity recognition. |
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Pan Jialin, Sinno |
author_facet |
Pan Jialin, Sinno Zhao, Qingmei |
format |
Final Year Project |
author |
Zhao, Qingmei |
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Zhao, Qingmei |
title |
Watch-based hand activity recognition through machine learning |
title_short |
Watch-based hand activity recognition through machine learning |
title_full |
Watch-based hand activity recognition through machine learning |
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Watch-based hand activity recognition through machine learning |
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Watch-based hand activity recognition through machine learning |
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watch-based hand activity recognition through machine learning |
publishDate |
2018 |
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http://hdl.handle.net/10356/73996 |
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1759854195815481344 |