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Force Myography-Based Human Robot Interactions via Deep Domain Adaptation and Generalization.

Umme ZakiaCarlo Menon
Published in: Sensors (Basel, Switzerland) (2021)
Estimating applied force using force myography (FMG) technique can be effective in human-robot interactions (HRI) using data-driven models. A model predicts well when adequate training and evaluation are observed in same session, which is sometimes time consuming and impractical. In real scenarios, a pretrained transfer learning model predicting forces quickly once fine-tuned to target distribution would be a favorable choice and hence needs to be examined. Therefore, in this study a unified supervised FMG-based deep transfer learner (SFMG-DTL) model using CNN architecture was pretrained with multiple sessions FMG source data (D s , T s ) and evaluated in estimating forces in separate target domains (D t , T t ) via supervised domain adaptation (SDA) and supervised domain generalization (SDG). For SDA, case (i) intra-subject evaluation (D s ≠ D t-SDA , T s ≈ T t-SDA ) was examined, while for SDG, case (ii) cross-subject evaluation (D s ≠ D t-SDG , T s ≠ T t-SDG ) was examined. Fine tuning with few "target training data" calibrated the model effectively towards target adaptation. The proposed SFMG-DTL model performed better with higher estimation accuracies and lower errors (R 2 ≥ 88%, NRMSE ≤ 0.6) in both cases. These results reveal that interactive force estimations via transfer learning will improve daily HRI experiences where "target training data" is limited, or faster adaptation is required.
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