Radar-based human identification using deep neural network for long-term stability
Human identification plays a vital role in daily lives. A majority of biometric technologies require the active cooperation of humans, while gait recognition does not. Compared with other identification technologies, radar-based technology can monitor the human body around the clock without being af...
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Published in | IET radar, sonar & navigation Vol. 14; no. 10; pp. 1521 - 1527 |
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Main Authors | , , , , |
Format | Journal Article |
Language | English |
Published |
The Institution of Engineering and Technology
01.10.2020
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Subjects | |
Online Access | Get full text |
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Summary: | Human identification plays a vital role in daily lives. A majority of biometric technologies require the active cooperation of humans, while gait recognition does not. Compared with other identification technologies, radar-based technology can monitor the human body around the clock without being affected by light/weather, and is not easy to be forged while protecting privacy. Previous researches have revealed that gait signatures acquired using radar can be used for human identification, but there is almost no literature on the long-term stability of gait signatures. Due to the long-term interval observation, the human micro-Doppler will change according to the subject (such as slight differences in walking posture). In this study, a novel network is proposed to realise stable identification of humans by extracting long-term stable features. The micro-Doppler data is processed by a short-time Fourier transform and finally classified by the proposed neural network. Data acquisition was carried out within more than a month. The experimental results demonstrate that the recognition accuracy of the validation set can reach about 99%, and the recognition accuracy of the test set can reach 90% (improved 3% compared with the network without a recurrent neural network), showing the potential of the proposed method in long-term stable identification. |
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ISSN: | 1751-8784 1751-8792 |
DOI: | 10.1049/iet-rsn.2019.0618 |