HCMay 15

Handwriting decoding as a challenging motor task for EEG Foundation Models

arXiv:2605.1569882.1Has Code
AI Analysis

For EEG foundation model researchers, this work identifies limitations of current FMs on a fine-grained motor decoding task and introduces a more rigorous benchmark.

The authors propose handwriting decoding as a challenging motor task for EEG foundation models, showing that current FMs are outperformed by smaller task-specific models. Key findings include a drop from 41.3% to 32.4% when movement-onset knowledge is removed, and test-time signal quality improvements from 45% to 78% in the best subject.

Recent attempts at creating Foundation Models (FMs) for Electroencephalography (EEG) have achieved state-of-the-art performance on multiple tasks including Motor Imagery (MI). These MI tasks have typically involved coarse classification between imagined limb movements. However, the development of foundation models necessitates diverse datasets, both for pretraining and evaluating the progress of these models. In this work, we propose handwriting decoding as a challenging motor task for FMs. We show that several existing datasets are potentially confounded, and introduce a dataset that more rigorously evaluates models. On this dataset, we find that current FMs, despite showing SOTA performance in multiple MI datasets are outperformed by smaller task-specific models. We also highlight challenges specific to EEG-based handwriting decoding to inform future work. In our 4-letter classification task, we show that (a) Knowledge of movement-onset is crucial to reported decoding performance in prior works, with average performance across subjects dropping from $41.3\%$ to $32.4\%$. (b) Increasing test-time signal quality provides significant performance improvements ($45\%$ to $78\%$ in our best subject) compared to scaling training data with single-trial EEG. (c) While scaling training data steadily improves decoding performance, existing FMs do not outperform specialist models in handwriting decoding. We make our code available at https://anonymous.4open.science/r/EEG-Handwriting-BCI-DFCD/

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