Calibration-free online test-time adaptation for electroencephalography
motor imagery decoding
- URL: http://arxiv.org/abs/2311.18520v2
- Date: Mon, 8 Jan 2024 08:29:29 GMT
- Title: Calibration-free online test-time adaptation for electroencephalography
motor imagery decoding
- Authors: Martin Wimpff, Mario D\"obler, Bin Yang
- Abstract summary: We will explore the concept of online test-time adaptation (OTTA) to continuously adapt the model in an unsupervised fashion during inference time.
Our approach guarantees the preservation of privacy by eliminating the requirement to access the source data during the adaptation process.
We will investigate the task of electroencephalography (EEG) motor imagery decoding using a lightweight architecture together with different OTTA techniques like alignment, adaptive batch normalization, and entropy minimization.
- Score: 3.5139431332194198
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Providing a promising pathway to link the human brain with external devices,
Brain-Computer Interfaces (BCIs) have seen notable advancements in decoding
capabilities, primarily driven by increasingly sophisticated techniques,
especially deep learning. However, achieving high accuracy in real-world
scenarios remains a challenge due to the distribution shift between sessions
and subjects. In this paper we will explore the concept of online test-time
adaptation (OTTA) to continuously adapt the model in an unsupervised fashion
during inference time. Our approach guarantees the preservation of privacy by
eliminating the requirement to access the source data during the adaptation
process. Additionally, OTTA achieves calibration-free operation by not
requiring any session- or subject-specific data. We will investigate the task
of electroencephalography (EEG) motor imagery decoding using a lightweight
architecture together with different OTTA techniques like alignment, adaptive
batch normalization, and entropy minimization. We examine two datasets and
three distinct data settings for a comprehensive analysis. Our adaptation
methods produce state-of-the-art results, potentially instigating a shift in
transfer learning for BCI decoding towards online adaptation.
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