IEEE Trans Biomed Eng. 2021 Jul;68(7):2176-2187. doi: 10.1109/TBME.2020.3037934. Epub 2021 Jun 17.
Asynchronous motor Brain Computer Interfacing (BCI) is characterized by the continuous decoding of intended muscular activity from brain signals. Such applications have gained widespread interest for enabling users to issue commands volitionally. In conventional motor BCIs features extracted from brain signals are concatenated into vector- or matrix-based (or one-/two-way) representations. Nevertheless, when accounting for the original multimodal or multiway signal structure, decoding performance has been shown to improve jointly with result interpretability. However, as multiway decoders are notorious for the extensive computational cost to train them, conventional ones are still preferred. To curb this limitation, we introduce a novel multiway classifier, called Block-Term Tensor Classifier that inherits the improved accuracy of multiway methods while providing fast training. We show that it can outperform state-of-the-art multiway and two-way Linear Discriminant Analysis classifiers in asynchronous detection of individual finger movements from intracranial recordings, an essential feature to achieve a sense of dexterity with hand prosthetics and exoskeletons.
异步电机脑机接口(BCI)的特点是从脑信号中连续解码预期的肌肉活动。此类应用程序已经引起了广泛的兴趣,因为它们使用户能够自愿发出命令。在传统的电机 BCI 中,从脑信号中提取的特征被串联成基于向量或矩阵的(或单向/双向)表示形式。然而,当考虑到原始的多模态或多向信号结构时,解码性能已被证明可以与结果可解释性一起得到提高。然而,由于多向解码器以训练它们所需的巨大计算成本而臭名昭著,因此传统的解码器仍然更受欢迎。为了克服这一限制,我们引入了一种新的多向分类器,称为块项张量分类器,它继承了多向方法的改进准确性,同时提供快速训练。我们表明,它可以在从颅内记录中异步检测个体手指运动方面优于最先进的多向和双向线性判别分析分类器,这是实现手部假肢和外骨骼灵巧感的基本特征。