Towards Green Wearable Computing: A Physics-Aware Spiking Neural Network for Energy-Efficient IMU-based Human Activity Recognition

arXiv cs.LG / 4/14/2026

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Key Points

  • The paper addresses the high power and buffering costs of deep neural networks for IMU-based human activity recognition on battery-constrained wearable devices, motivating event-driven spiking approaches.
  • It introduces PAS-Net, a fully multiplier-free Physics-Aware Spiking Neural Network that incorporates a joint-constraint-enforcing topology mixer and a causal, O(1)-memory neuromodulator for handling non-stationary movement rhythms.
  • PAS-Net uses a temporal spike error objective to enable a confidence-driven early-exit mechanism, allowing flexible inference for continuous IMU streams without processing fixed-length windows.
  • Across seven datasets, the method reports state-of-the-art accuracy while replacing dense computation with sparse 0.1 pJ integer accumulations.
  • The authors claim dynamic energy consumption reductions of up to 98% due to the early-exit strategy, positioning PAS-Net as an ultra-low-power neuromorphic standard for always-on sensing.

Abstract

Wearable IMU-based Human Activity Recognition (HAR) relies heavily on Deep Neural Networks (DNNs), which are burdened by immense computational and buffering demands. Their power-hungry floating-point operations and rigid requirement to process complete temporal windows severely cripple battery-constrained edge devices. While Spiking Neural Networks (SNNs) offer extreme event-driven energy efficiency, standard architectures struggle with complex biomechanical topologies and temporal gradient degradation. To bridge this gap, we propose the Physics-Aware Spiking Neural Network (PAS-Net), a fully multiplier-free architecture explicitly tailored for Green HAR. Spatially, an adaptive symmetric topology mixer enforces human-joint physical constraints. Temporally, an O(1)-memory causal neuromodulator yields context-aware dynamic threshold neurons, adapting actively to non-stationary movement rhythms. Furthermore, we leverage a temporal spike error objective to unlock a flexible early-exit mechanism for continuous IMU streams. Evaluated across seven diverse datasets, PAS-Net achieves state-of-the-art accuracy while replacing dense operations with sparse 0.1 pJ integer accumulations. Crucially, its confidence-driven early-exit capability drastically reduces dynamic energy consumption by up to 98\%. PAS-Net establishes a robust, ultra-low-power neuromorphic standard for always-on wearable sensing.