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3 months ago

FingerFlex: Inferring Finger Trajectories from ECoG signals

Vladislav Lomtev Alexander Kovalev Alexey Timchenko

FingerFlex: Inferring Finger Trajectories from ECoG signals

Abstract

Motor brain-computer interface (BCI) development relies critically on neural time series decoding algorithms. Recent advances in deep learning architectures allow for automatic feature selection to approximate higher-order dependencies in data. This article presents the FingerFlex model - a convolutional encoder-decoder architecture adapted for finger movement regression on electrocorticographic (ECoG) brain data. State-of-the-art performance was achieved on a publicly available BCI competition IV dataset 4 with a correlation coefficient between true and predicted trajectories up to 0.74. The presented method provides the opportunity for developing fully-functional high-precision cortical motor brain-computer interfaces.

Code Repositories

Irautak/FingerFlex
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
brain-decoding-on-bci-competition-iv-ecog-toFingerFlex
Pearson Correlation: 0.67
brain-decoding-on-stanford-ecog-library-ecogFingerFlex
Pearson Correlation: 0.49

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FingerFlex: Inferring Finger Trajectories from ECoG signals | Papers | HyperAI