Smart electronic skin having gesture recognition function by LSTM neural network
Rapid growth of soft electronics has enabled various approaches for developing artificial skin. However, currently existing electronic skin is still facing some problems such as high fabrication complexity, high production cost, and smartness of recognizing the stimulus automatically. In this work,...
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sg-ntu-dr.10356-883862020-03-07T14:02:35Z Smart electronic skin having gesture recognition function by LSTM neural network Chen, Teng Peng Liu, G. Y. Kong, D. Y. Hu, S. G. Yu, Q. Liu, Z. Yin, Y. Hosaka, Sumio Liu, Y. School of Electrical and Electronic Engineering Neural Network DRNTU::Engineering::Electrical and electronic engineering Gesture Recognition Rapid growth of soft electronics has enabled various approaches for developing artificial skin. However, currently existing electronic skin is still facing some problems such as high fabrication complexity, high production cost, and smartness of recognizing the stimulus automatically. In this work, we report a simple, low-cost Polydimethylsiloxane (PDMS)-based smart electronic skin system, consisting of a sensor array and a data processing system. The sensor array can be easily mounted on the human body or robot hand as a result of excellent softness, stretchability, and bendability of PDMS. Signals from the sensor array are processed by a Long and Short Term Memory neural network algorithm in the data processing system. The trained data processing system can recognize four types of gestures at an accuracy of 85 ± 5%, even taking into account environmental variations including folding, curvature, tensile strength, temperature, and endurance cycles. This work proves that this type of skin can be endowed with intelligence with a proper neural network algorithm and fabricated at low cost and reduced complexity. Published version 2019-02-01T05:22:45Z 2019-12-06T17:02:08Z 2019-02-01T05:22:45Z 2019-12-06T17:02:08Z 2018 Journal Article Liu, G. Y., Kong, D. Y., Hu, S. G., Yu, Q., Liu, Z., Chen, T. P., . . . Liu, Y. (2018). Smart electronic skin having gesture recognition function by LSTM neural network. Applied Physics Letters, 113(8), 084102-. doi:10.1063/1.5040413 0003-6951 https://hdl.handle.net/10356/88386 http://hdl.handle.net/10220/47610 10.1063/1.5040413 en Applied Physics Letters © 2018 The Author(s). All rights reserved. This paper was published by AIP Publishing in Applied Physics Letters and is made available with permission of The Author(s). 5 p. application/pdf |
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Neural Network DRNTU::Engineering::Electrical and electronic engineering Gesture Recognition Chen, Teng Peng Liu, G. Y. Kong, D. Y. Hu, S. G. Yu, Q. Liu, Z. Yin, Y. Hosaka, Sumio Liu, Y. Smart electronic skin having gesture recognition function by LSTM neural network |
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Rapid growth of soft electronics has enabled various approaches for developing artificial skin. However, currently existing electronic skin is still facing some problems such as high fabrication complexity, high production cost, and smartness of recognizing the stimulus automatically. In this work, we report a simple, low-cost Polydimethylsiloxane (PDMS)-based smart electronic skin system, consisting of a sensor array and a data processing system. The sensor array can be easily mounted on the human body or robot hand as a result of excellent softness, stretchability, and bendability of PDMS. Signals from the sensor array are processed by a Long and Short Term Memory neural network algorithm in the data processing system. The trained data processing system can recognize four types of gestures at an accuracy of 85 ± 5%, even taking into account environmental variations including folding, curvature, tensile strength, temperature, and endurance cycles. This work proves that this type of skin can be endowed with intelligence with a proper neural network algorithm and fabricated at low cost and reduced complexity. |
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School of Electrical and Electronic Engineering |
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School of Electrical and Electronic Engineering Chen, Teng Peng Liu, G. Y. Kong, D. Y. Hu, S. G. Yu, Q. Liu, Z. Yin, Y. Hosaka, Sumio Liu, Y. |
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Article |
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Chen, Teng Peng Liu, G. Y. Kong, D. Y. Hu, S. G. Yu, Q. Liu, Z. Yin, Y. Hosaka, Sumio Liu, Y. |
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Chen, Teng Peng |
title |
Smart electronic skin having gesture recognition function by LSTM neural network |
title_short |
Smart electronic skin having gesture recognition function by LSTM neural network |
title_full |
Smart electronic skin having gesture recognition function by LSTM neural network |
title_fullStr |
Smart electronic skin having gesture recognition function by LSTM neural network |
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Smart electronic skin having gesture recognition function by LSTM neural network |
title_sort |
smart electronic skin having gesture recognition function by lstm neural network |
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2019 |
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https://hdl.handle.net/10356/88386 http://hdl.handle.net/10220/47610 |
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1681045518504951808 |