Affiliation:
1. Zhejiang University
2. National University of Singapore
3. Zhejiang Lab
Abstract
Biometric signal based human-computer interface (HCI) has attracted increasing attention due to its wide application in healthcare, entertainment, neurocomputing, and so on. In recent years, deep learning-based approaches have made great progress on biometric signal processing. However, the state-of-the-art (SOTA) approaches still suffer from model degradation across subjects or sessions. In this work, we propose a novel unsupervised domain adaptation approach for biometric signal-based HCI via causal representation learning. Specifically, three kinds of interventions on biometric signals (i.e., subjects, sessions, and trials) can be selected to generalize deep models across the selected intervention. In the proposed approach, a generative model is trained for producing intervened features that are subsequently used for learning transferable and causal relations with three modes. Experiments on the EEG-based emotion recognition task and sEMG-based gesture recognition task are conducted to confirm the superiority of our approach. An improvement of +0.21% on the task of inter-subject EEG-based emotion recognition is achieved using our approach. Besides, on the task of inter-session sEMG-based gesture recognition, our approach achieves improvements of +1.47%, +3.36%, +1.71%, and +1.01% on sEMG datasets including CSL-HDEMG, CapgMyo DB-b, 3DC, and Ninapro DB6, respectively. The proposed approach also works on the task of inter-trial sEMG-based gesture recognition and an average improvement of +0.66% on Ninapro databases is achieved. These experimental results show the superiority of the proposed approach compared with the SOTA unsupervised domain adaptation methods on HCIs based on biometric signal.
Funder
National Natural Science Foundation of China
Science and Technology Planning Project of Zhejiang, China
Publisher
Association for Computing Machinery (ACM)
Subject
Computer Networks and Communications,Hardware and Architecture
Reference80 articles.
1. Hana Ajakan Pascal Germain Hugo Larochelle François Laviolette and Mario Marchand. 2014. Domain-adversarial neural networks. arXiv:1412.4446. Retrieved from https://arxiv.org/abs/1412.4446.
2. Advancing Muscle-Computer Interfaces with High-Density Electromyography
3. Martin Arjovsky Léon Bottou Ishaan Gulrajani and David Lopez-Paz. 2019. Invariant risk minimization. arXiv:1907.02893. Retrieved from https://arxiv.org/abs/1907.02893.
4. Electromyography data for non-invasive naturally-controlled robotic hand prostheses;Atzori Manfredo;Scientific Data,2014
5. Ibtissem Belakhdar, Walid Kaaniche, Ridha Djmel, and Bouraoui Ouni. 2016. A comparison between ANN and SVM classifier for drowsiness detection based on single EEG channel. In Proceedings of the International Conference on Advanced Technologies for Signal and Image Processing. 443–446.
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