TR2020-109
Disentangled Adversarial Transfer Learning for Physiological Biosignals
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- "Disentangled Adversarial Transfer Learning for Physiological Biosignals", International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC), DOI: 10.1109/EMBC44109.2020.9175233, July 2020.BibTeX TR2020-109 PDF Video Presentation
- @inproceedings{Han2020jul,
- author = {Han, Mo and Ozdenizci, Ozan and Wang, Ye and Koike-Akino, Toshiaki and Erdogmus, Deniz},
- title = {Disentangled Adversarial Transfer Learning for Physiological Biosignals},
- booktitle = {International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC)},
- year = 2020,
- month = jul,
- publisher = {IEEE},
- doi = {10.1109/EMBC44109.2020.9175233},
- issn = {1558-4615},
- isbn = {978-1-7281-1990-8},
- url = {https://www.merl.com/publications/TR2020-109}
- }
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- "Disentangled Adversarial Transfer Learning for Physiological Biosignals", International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC), DOI: 10.1109/EMBC44109.2020.9175233, July 2020.
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MERL Contacts:
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Research Areas:
Artificial Intelligence, Human-Computer Interaction, Machine Learning, Signal Processing
Abstract:
Recent developments in wearable sensors demonstrate promising results for monitoring physiological status in effective and comfortable ways. One major challenge of physiological status assessment is the problem of transfer learning caused by the domain inconsistency of biosignals across users or different recording sessions from the same user. We propose an adversarial inference approach for transfer learning to extract disentangled nuisance-robust representations from physiological biosignal data in stress status level assessment. We exploit the trade-off between task-related features and persondiscriminative information by using both an adversary network and a nuisance network to jointly manipulate and disentangle the learned latent representations by the encoder, which are then input to a discriminative classifier. Results on crosssubjects transfer evaluations demonstrate the benefits of the proposed adversarial framework, and thus show its capabilities to adapt to a broader range of subjects. Finally we highlight that our proposed adversarial transfer learning approach is also applicable to other deep feature learning frameworks.