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Human Activity Recognition With FMCW Radar Using Few-Shot Learning

Shufeng Gong, Hanyin Shi, Xinyue Yan, Yiming Fang, Agyemang Paul, Zhefu Wu, Weijun Long

2023IEEE Sensors Journal23 citationsDOI

Abstract

Frequency-modulated continuous-wave (FMCW) radar-based human activity recognition algorithms often require a large amount of sample data and have a high computational complexity. To address this problem, we propose a learning technique based on few-shot learning using less samples for FMCW radar human activity recognition. The wavelet transform and background frame differences processing on recorded human activity signals are first leveraged to obtain noise-reduced and frame-calibrated data, and then, the 2-D Fourier transform is applied to construct a range-Doppler map (RDM). Next, the maps were stitched together frame by frame along the velocity dimension to form micro-Doppler signatures (m-D signatures), which are used for feature extractions of different human activities. Finally, these m-D signatures are put into a designed residual block prototypical networks for training and classification. The experimental results show that our method is less computationally complex and more generalizable, with an average recognition accuracy of 98.33% for eight human activities with only 30 training samples.

Topics & Concepts

Computer scienceArtificial intelligenceRadarFrame (networking)Pattern recognition (psychology)Continuous-wave radarDoppler radarComputer visionFeature (linguistics)Radar imagingTelecommunicationsLinguisticsPhilosophyAdvanced SAR Imaging TechniquesNon-Invasive Vital Sign MonitoringGait Recognition and Analysis
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