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.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Ground Reaction Force Anteroposterior (GRF_AP) Estimation | Dataset A (stance phase) | Correlation Coefficient (r)0.991 | 4 | |
| Ground Reaction Force Mediolateral (GRF_ML) Estimation | Dataset A (stance phase) | Correlation Coefficient (r)0.972 | 4 | |
| Ground Reaction Force Vertical (GRF_V) Estimation | Dataset A (stance phase) | Correlation Coefficient (r)0.987 | 4 | |
| Ground Reaction Moment Anteroposterior (GRM_AP) Estimation | Dataset A (stance phase) | Correlation (r)0.983 | 4 | |
| Ground Reaction Moment Mediolateral (GRM_ML) Estimation | Dataset A (stance phase) | Correlation Coefficient (r)0.99 | 4 | |
| Ground Reaction Moment Vertical (GRM_V) Estimation | Dataset A (stance phase) | Correlation Coefficient (r)0.987 | 4 |