cs.AI updates on arXiv.org 07月10日 12:05
SImpHAR: Advancing impedance-based human activity recognition using 3D simulation and text-to-motion models
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本文提出SImpHAR框架,通过模拟生成生物阻抗信号和两阶段训练策略,提高人体活动识别的准确性和F1分数,为生物阻抗传感在健康、健身和交互领域的应用提供新思路。

arXiv:2507.06405v1 Announce Type: cross Abstract: Human Activity Recognition (HAR) with wearable sensors is essential for applications in healthcare, fitness, and human-computer interaction. Bio-impedance sensing offers unique advantages for fine-grained motion capture but remains underutilized due to the scarcity of labeled data. We introduce SImpHAR, a novel framework addressing this limitation through two core contributions. First, we propose a simulation pipeline that generates realistic bio-impedance signals from 3D human meshes using shortest-path estimation, soft-body physics, and text-to-motion generation serving as a digital twin for data augmentation. Second, we design a two-stage training strategy with decoupled approach that enables broader activity coverage without requiring label-aligned synthetic data. We evaluate SImpHAR on our collected ImpAct dataset and two public benchmarks, showing consistent improvements over state-of-the-art methods, with gains of up to 22.3% and 21.8%, in terms of accuracy and macro F1 score, respectively. Our results highlight the promise of simulation-driven augmentation and modular training for impedance-based HAR.

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人体活动识别 生物阻抗传感 数据增强 模拟训练
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