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Dual-Path Region-Guided Attention Network for Ground Reaction Force and Moment Regression

About

Accurate estimation of three-dimensional ground reaction forces and moments (GRFs/GRMs) is crucial for both biomechanics research and clinical rehabilitation evaluation. In this study, we focus on insole-based GRF/GRM estimation and further validate our approach on a public walking dataset. We propose a Dual-Path Region-Guided Attention Network that integrates anatomy-inspired spatial priors and temporal priors into a region-level attention mechanism, while a complementary path captures context from the full sensor field. The two paths are trained jointly and their outputs are combined to produce the final GRF/GRM predictions. Conclusions: Our model outperforms strong baseline models, including CNN and CNN-LSTM architectures on two datasets, achieving the lowest six-component average NRMSE of 5.78% on the insole dataset and 1.42% for the vertical ground reaction force on the public dataset. This demonstrates robust performance for ground reaction force and moment estimation.

Xuan Li, Samuel Bello• 2025

Related benchmarks

TaskDatasetResultRank
Ground Reaction Force Anteroposterior (GRF_AP) EstimationDataset A (stance phase)
Correlation Coefficient (r)0.991
4
Ground Reaction Force Mediolateral (GRF_ML) EstimationDataset A (stance phase)
Correlation Coefficient (r)0.972
4
Ground Reaction Force Vertical (GRF_V) EstimationDataset A (stance phase)
Correlation Coefficient (r)0.987
4
Ground Reaction Moment Anteroposterior (GRM_AP) EstimationDataset A (stance phase)
Correlation (r)0.983
4
Ground Reaction Moment Mediolateral (GRM_ML) EstimationDataset A (stance phase)
Correlation Coefficient (r)0.99
4
Ground Reaction Moment Vertical (GRM_V) EstimationDataset A (stance phase)
Correlation Coefficient (r)0.987
4
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