Bi-Band ECoGNet for ECoG Decoding on Classification Task
In the application of brain-computer interface (BCI), being able to accurately decode brain signals is a critical task. For the multi-class classification task of brain signal ECoG, how to improve the classification accuracy is one of the current research hotspots. ECoG acquisition uses a high-densi...
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Zusammenfassung: | In the application of brain-computer interface (BCI), being able to
accurately decode brain signals is a critical task. For the multi-class
classification task of brain signal ECoG, how to improve the classification
accuracy is one of the current research hotspots. ECoG acquisition uses a
high-density electrode array and a high sampling frequency, which makes ECoG
data have a certain high similarity and data redundancy in the temporal domain,
and also unique spatial pattern in spatial domain. How to effectively extract
features is both exciting and challenging. Previous work found that
visual-related ECoG can carry visual information via frequency and spatial
domain. Based on this finding, we focused on using deep learning to design
frequency and spatial feature extraction modules, and proposed a Bi-Band
ECoGNet model based on deep learning. The main contributions of this paper are:
1) The Bi-BCWT (Bi-Band Channel-Wise Transform) neural network module is
designed to replace the time-consume method MST, this module greatly improves
the model calculation and data storage efficiency, and effectively increases
the training speed; 2) The Bi-BCWT module can effectively take into account the
information both in low-frequency and high-frequency domain, which is more
conducive to ECoG multi-classification tasks; 3) ECoG is acquired using 2D
electrode array, the newly designed 2D Spatial-Temporal feature encoder can
extract the 2D spatial feature better. Experiments have shown that the unique
2D spatial data structure can effectively improve classification accuracy; 3)
Compared with previous work, the Bi-Band ECoGNet model is smaller and has
higher performance, with an accuracy increase of 1.24%, and the model training
speed is increased by 6 times, which is more suitable for BCI applications. |
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DOI: | 10.48550/arxiv.2412.00378 |