ArXiv TLDR

Frequency Matching in Spiking Neural Networks for mmWave Sensing

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2605.09983

Di Yu, Zhenyu Liao, Changze Lv, Wentao Tong, Linshan Jiang + 5 more

cs.NE

TLDR

This paper introduces frequency matching in SNNs for mmWave sensing, improving accuracy and energy efficiency by aligning LIF dynamics with signal frequencies.

Key contributions

  • Studies spiking neural networks (SNNs) for efficient millimeter-wave (mmWave) sensing on edge devices.
  • Analyzes how SNN's leaky integrate-and-fire (LIF) dynamics implicitly filter mmWave signal frequencies.
  • Derives a principled criterion to configure SNN membrane decay by matching data's spectral content.
  • Achieves 6.22% higher accuracy and 3.64x lower energy consumption than ANNs on mmWave datasets.

Why it matters

This work addresses the efficiency limitations of ANNs in mmWave sensing, crucial for privacy-preserving edge perception. By providing a principled method to optimize SNNs through frequency matching, it enables more accurate and energy-efficient solutions. This advancement is vital for deploying robust mmWave systems on resource-constrained edge devices.

Original Abstract

Millimeter-wave (mmWave) sensing enables privacy-preserving, always-on edge perception, but its measurements are often sparse, temporally irregular, and corrupted by high-frequency noise. Existing mmWave pipelines predominantly rely on artificial neural networks (ANNs), which achieve robustness through extensive preprocessing or deep architectures, thereby limiting their efficiency on edge devices. In this work, we study spiking neural networks (SNNs) for mmWave sensing from a mechanism-data alignment perspective. By leveraging the low-pass filtering behavior of leaky integrate-and-fire (LIF) dynamics, we analyze how their implicit temporal filtering interacts with the frequency structure of mmWave signals. Our analysis shows that when discriminative information resides in low-to-mid frequencies, LIF dynamics can inherently suppress high-frequency noise, clarifying when and why SNNs outperform ANNs. Based on this insight, we derive a principled criterion for configuring the membrane decay factor by matching the effective bandwidth of LIF dynamics to the data's discriminative spectral content. Experimental results across four widely used mmWave datasets validate the proposed frequency-matching hypothesis, yielding an average test-accuracy improvement of 6.22% and a 3.64$\times$ reduction in theoretical energy consumption relative to ANN baselines, under a unified evaluation protocol.

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