Selective Correlation Based Knowledge Distillation for Ground Reaction Force Estimation
Eun Som Jeon, Jisoo Lee, Huisu Lim, Omik M. Save, Hyunglae Lee, Pavan Turaga

TL;DR
This paper introduces SCKD, a knowledge distillation method that improves ground reaction force estimation from wearable insole sensors by enhancing interpretability and accuracy while reducing computational requirements.
Contribution
The paper proposes a novel selective correlation-based knowledge distillation framework tailored for portable GRF estimation, addressing noise and resource constraints.
Findings
SCKD outperforms existing methods in GRF estimation accuracy.
The framework effectively handles high-dimensional, noisy sensor data.
Various teacher-student configurations demonstrate robustness across conditions.
Abstract
Wearable sensor-based human gait analysis holds great promise in healthcare, rehabilitation, clinical diagnosis and monitoring, and sports activities. Specifically, ground reaction force (GRF) provides essential insights into the body's interaction with the ground during movement and is typically measured using instrumented treadmills equipped with force plates. However, such equipment is expensive and restricted to laboratory environments. To enable a more portable solution, wearable insole sensors have been used to measure GRF. These sensors, however, are prone to noise and external interference, which reduces measurement accuracy. Deep learning methodologies could be adopted to address these issues, but they often require significant computing resources to achieve high accuracy, limiting their applicability for real-time analysis on portable devices. To overcome these limitations, we…
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