Light-weight Gesture Sensing Using FMCW Radar Time Series Data
The paper proposes a novel feature extraction approach for FMCW radar systems in the field of short-range gesture sensing. A light-weight processing is proposed which reduces a series of 3D radar data cubes to four 1D time signals containing information about range, azimuth angle, elevation angle an...
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Zusammenfassung: | The paper proposes a novel feature extraction approach for FMCW radar systems
in the field of short-range gesture sensing. A light-weight processing is
proposed which reduces a series of 3D radar data cubes to four 1D time signals
containing information about range, azimuth angle, elevation angle and
magnitude. The processing is entirely performed in the time domain without
using any Fourier transformation and enables the training of a deep neural
network directly on the raw time domain data. It is shown experimentally on
real world data, that the proposed processing retains the same expressive power
as conventional radar processing to range-, Doppler- and angle-spectrograms.
Further, the computational complexity is significantly reduced which makes it
perfectly suitable for embedded devices. The system is able to recognize ten
different gestures with an accuracy of about 95% and is running in real time on
a Raspberry Pi 3 B. The delay between end of gesture and prediction is only 150
ms. |
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DOI: | 10.48550/arxiv.2111.11219 |