Paper ID: 2504.12039 • Published Apr 16, 2025
RadMamba: Efficient Human Activity Recognition through Radar-based Micro-Doppler-Oriented Mamba State-Space Model
Yizhuo Wu, Francesco Fioranelli, Chang Gao
Delft University of Technology
TL;DR
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Radar-based HAR has emerged as a promising alternative to conventional
monitoring approaches, such as wearable devices and camera-based systems, due
to its unique privacy preservation and robustness advantages. However, existing
solutions based on convolutional and recurrent neural networks, although
effective, are computationally demanding during deployment. This limits their
applicability in scenarios with constrained resources or those requiring
multiple sensors. Advanced architectures, such as ViT and SSM architectures,
offer improved modeling capabilities and have made efforts toward lightweight
designs. However, their computational complexity remains relatively high. To
leverage the strengths of transformer architectures while simultaneously
enhancing accuracy and reducing computational complexity, this paper introduces
RadMamba, a parameter-efficient, radar micro-Doppler-oriented Mamba SSM
specifically tailored for radar-based HAR. Across three diverse datasets,
RadMamba matches the top-performing previous model's 99.8% classification
accuracy on Dataset DIAT with only 1/400 of its parameters and equals the
leading models' 92.0% accuracy on Dataset CI4R with merely 1/10 of their
parameters. In scenarios with continuous sequences of actions evaluated on
Dataset UoG2020, RadMamba surpasses other models with significantly higher
parameter counts by at least 3%, achieving this with only 6.7k parameters. Our
code is available at: this https URL
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