A MIMO Radar-based Few-Shot Learning Approach for Human-ID
Radar for deep learning-based human identification has become a research area of increasing interest. It has been shown that micro-Doppler ($\mu$-D) can reflect the walking behavior through capturing the periodic limbs' micro-motions. One of the main aspects is maximizing the number of included...
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Zusammenfassung: | Radar for deep learning-based human identification has become a research area
of increasing interest. It has been shown that micro-Doppler ($\mu$-D) can
reflect the walking behavior through capturing the periodic limbs'
micro-motions. One of the main aspects is maximizing the number of included
classes while considering the real-time and training dataset size constraints.
In this paper, a multiple-input-multiple-output (MIMO) radar is used to
formulate micro-motion spectrograms of the elevation angular velocity
($\mu$-$\omega$). The effectiveness of concatenating this newly-formulated
spectrogram with the commonly used $\mu$-D is investigated. To accommodate for
non-constrained real walking motion, an adaptive cycle segmentation framework
is utilized and a metric learning network is trained on half gait cycles
($\approx$ 0.5 s). Studies on the effects of various numbers of classes
(5--20), different dataset sizes, and varying observation time windows 1--2 s
are conducted. A non-constrained walking dataset of 22 subjects is collected
with different aspect angles with respect to the radar. The proposed few-shot
learning (FSL) approach achieves a classification error of 11.3 % with only 2
min of training data per subject. |
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DOI: | 10.48550/arxiv.2110.08595 |