TY - JOUR
T1 - MDF-Net
T2 - A Misclassified Data Fusion Network for Locomotion Mode Misclassification Detection and Correction in Lower-Limb Exoskeletons
AU - Liu, Yali
AU - Zhang, Jingyi
AU - Song, Ding'An
AU - Jia, Tianyu
AU - Song, Qiuzhi
N1 - Publisher Copyright:
© 2016 IEEE.
PY - 2026
Y1 - 2026
N2 - Accurate recognition of human locomotion intent is essential for the cooperative control of exoskeletons in human-machine interaction. Threshold-based or result-driven strategies are widely used for misclassification detection and correction but overlook the intrinsic traits of misclassified data. This study proposes a misclassified data fusion network (MDF-Net). Firstly, a dual-label supervision mechanism is introduced, combining misclassification indicators with locomotion mode labels to enable multiple functions, including locomotion mode recognition, misclassification detection, and correction. Secondly, multi-class focal loss (MFL) replaces the conventional cross-entropy (CE) loss to address class imbalance between correctly and incorrectly classified samples. In addition, a hyperparameter is defined to adjust the loss weights for multi-class classification tasks. A motion dataset collected from a human-exoskeleton experiment, where subjects wore a rigid exoskeleton to perform locomotion tasks, was used to evaluate MDF-Net. MDF-Net achieved an average recognition accuracy of 99.99% across three locomotion modes and two slope conditions for five subjects, which was superior to the state-of-the-art models tested. Furthermore, MFL reduced misclassifications by 87.5% compared to CE. MDF-Net maintained an average recognition accuracy above 95% when testing on augmented data. On the exoskeleton control board, the model ran with an average inference time of 0.45 ms per sample. Results show that MDF-Net can effectively detect and correct misclassifications, significantly improving locomotion mode recognition accuracy, while demonstrating real-time performance and generalization capability, thereby ensuring safe human-exoskeleton interaction.
AB - Accurate recognition of human locomotion intent is essential for the cooperative control of exoskeletons in human-machine interaction. Threshold-based or result-driven strategies are widely used for misclassification detection and correction but overlook the intrinsic traits of misclassified data. This study proposes a misclassified data fusion network (MDF-Net). Firstly, a dual-label supervision mechanism is introduced, combining misclassification indicators with locomotion mode labels to enable multiple functions, including locomotion mode recognition, misclassification detection, and correction. Secondly, multi-class focal loss (MFL) replaces the conventional cross-entropy (CE) loss to address class imbalance between correctly and incorrectly classified samples. In addition, a hyperparameter is defined to adjust the loss weights for multi-class classification tasks. A motion dataset collected from a human-exoskeleton experiment, where subjects wore a rigid exoskeleton to perform locomotion tasks, was used to evaluate MDF-Net. MDF-Net achieved an average recognition accuracy of 99.99% across three locomotion modes and two slope conditions for five subjects, which was superior to the state-of-the-art models tested. Furthermore, MFL reduced misclassifications by 87.5% compared to CE. MDF-Net maintained an average recognition accuracy above 95% when testing on augmented data. On the exoskeleton control board, the model ran with an average inference time of 0.45 ms per sample. Results show that MDF-Net can effectively detect and correct misclassifications, significantly improving locomotion mode recognition accuracy, while demonstrating real-time performance and generalization capability, thereby ensuring safe human-exoskeleton interaction.
KW - Lower-limb exoskeleton
KW - locomotion misclassification correction
KW - locomotion recognition
KW - neural network
UR - https://www.scopus.com/pages/publications/105030204607
U2 - 10.1109/LRA.2026.3664539
DO - 10.1109/LRA.2026.3664539
M3 - Article
AN - SCOPUS:105030204607
SN - 2377-3766
VL - 11
SP - 3986
EP - 3993
JO - IEEE Robotics and Automation Letters
JF - IEEE Robotics and Automation Letters
IS - 4
ER -