Enabling Temporal-Spectral Decoding in Pre-movement Detection
Hao Jia, Feng Duan, Yu Zhang, Zhe Sun, Jordi Sole-Casals

TL;DR
This paper introduces TTSNet, a novel neural network that improves multi-class upper limb movement detection from brain signals by combining temporal and spectral analysis, enhancing accuracy over existing methods.
Contribution
The paper proposes TTSNet, a two-stage neural network that integrates filter banks, component analysis, and CNNs for better decoding of brain signals in movement detection.
Findings
TTSNet outperforms EEGNet and FBTRCA in accuracy.
Statistically significant improvements in movement detection.
Method shows potential for stroke rehabilitation applications.
Abstract
Non-invasive brain-computer interfaces help the subjects to control external devices by brain intentions. The multi-class classification of upper limb movements can provide external devices with more control commands. The onsets of the upper limb movements are located by the external limb trajectory to eliminate the delay and bias among the trials. However, the trajectories are not recorded due to the limitation of experiments. The delay cannot be avoided in the analysis of signals. The delay negatively influences the classification performance, which limits the further application of upper limb movements in the brain-computer interface. This work focuses on multi-channel brain signals analysis in the temporal-frequency approach. It proposes the two-stage-training temporal-spectral neural network (TTSNet) to decode patterns from brain signals. The TTSNet first divides the signals into…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Gaze Tracking and Assistive Technology · Neuroscience and Neural Engineering
