TSANet: multibranch attention deep neural network for classifying tactile selective attention in brain-computer interfaces

被引:0
作者
Hyeonjin Jang
Jae Seong Park
Sung Chan Jun
Sangtae Ahn
机构
[1] Kyungpook National University,School of Electronic and Electrical Engineering
[2] Korea Advanced Institute of Science and Technology,Department of Bio and Brain Engineering
[3] Korea Advanced Institute of Science and Technology,Program of Brain and Cognitive Engineering
[4] Gwangju Institute of Science and Technology,School of Electrical Engineering and Computer Science
[5] Gwangju Institute of Science and Technology,Artificial Intelligence Graduate School
[6] Kyungpook National University,School of Electronics Engineering
来源
Biomedical Engineering Letters | 2024年 / 14卷
关键词
Brain-computer interface; Electroencephalography; Tactile selective attention; Deep neural network; Feature attention;
D O I
暂无
中图分类号
学科分类号
摘要
Brain-computer interfaces (BCIs) enable communication between the brain and a computer and electroencephalography (EEG) has been widely used to implement BCIs because of its high temporal resolution and noninvasiveness. Recently, a tactile-based EEG task was introduced to overcome the current limitations of visual-based tasks, such as visual fatigue from sustained attention. However, the classification performance of tactile-based BCIs as control signals is unsatisfactory. Therefore, a novel classification approach is required for this purpose. Here, we propose TSANet, a deep neural network, that uses multibranch convolutional neural networks and a feature-attention mechanism to classify tactile selective attention (TSA) in a tactile-based BCI system. We tested TSANet under three evaluation conditions, namely, within-subject, leave-one-out, and cross-subject. We found that TSANet achieved the highest classification performance compared with conventional deep neural network models under all evaluation conditions. Additionally, we show that TSANet extracts reasonable features for TSA by investigating the weights of spatial filters. Our results demonstrate that TSANet has the potential to be used as an efficient end-to-end learning approach in tactile-based BCIs.
引用
收藏
页码:45 / 55
页数:10
相关论文
共 157 条
  • [1] Wolpaw JR(2000)Brain-computer interface technology: a review of the first international meeting IEEE Trans Rehabil Eng 8 164-173
  • [2] Birbaumer N(2019)Deep learning-based electroencephalography analysis: a systematic review J Neural Eng 16 051001-422
  • [3] Heetderks WJ(2019)A comprehensive review of EEG-based brain-computer interface paradigms J Neural Eng 70 410-1279
  • [4] McFarland DJ(2013)Time-frequency mixed-norm estimates: sparse M/EEG imaging with non-stationary source activations Neuroimage 12 1211-498
  • [5] Peckham PH(2012)Brain computer interfaces, a review Sensors 2 479-125
  • [6] Schalk G(2010)Electroencephalographic (EEG) control of three-dimensional movement J Neural Eng 167 115-220
  • [7] Roy Y(2012)The use of P300-based BCIs in amyotrophic lateral sclerosis: from augmentative and alternative communication to cognitive assessment Brain Behav 5 214-12
  • [8] Banville H(2006)A comparison of classification techniques for the P300 Speller J Neural Eng 9 1-1309
  • [9] Albuquerque I(2008)An efficient P300-based brain-computer interface for disabled subjects J Neurosci Methods 51 1303-239
  • [10] Gramfort A(2008)Control of a humanoid robot by a noninvasive brain-computer interface in humans J Neural Eng 19 232-37