Ensemble diverse hypotheses and knowledge distillation for unsupervised cross-subject adaptation
Kuangen Zhang, Jiahong Chen, Jing Wang, Xinxing Chen, Yuquan Leng,, Clarence W. de Silva, Chenglong Fu

TL;DR
This paper introduces EDHKD, a novel method combining ensemble diverse hypotheses and knowledge distillation to improve unsupervised cross-subject adaptation in human activity recognition, achieving high accuracy and efficiency.
Contribution
The paper proposes EDHKD, a new approach that enhances cross-subject adaptation by learning diverse features and distilling knowledge into a single efficient network.
Findings
EDHKD achieves over 94% accuracy on human locomotion datasets.
EDHKD outperforms existing methods by up to 7.1% in accuracy.
The method maintains high efficiency with 1 ms computation time.
Abstract
Recognizing human locomotion intent and activities is important for controlling the wearable robots while walking in complex environments. However, human-robot interface signals are usually user-dependent, which causes that the classifier trained on source subjects performs poorly on new subjects. To address this issue, this paper designs the ensemble diverse hypotheses and knowledge distillation (EDHKD) method to realize unsupervised cross-subject adaptation. EDH mitigates the divergence between labeled data of source subjects and unlabeled data of target subjects to accurately classify the locomotion modes of target subjects without labeling data. Compared to previous domain adaptation methods based on the single learner, which may only learn a subset of features from input signals, EDH can learn diverse features by incorporating multiple diverse feature generators and thus increases…
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Taxonomy
TopicsContext-Aware Activity Recognition Systems · Human Pose and Action Recognition · Anomaly Detection Techniques and Applications
MethodsKnowledge Distillation
