Valenti Andrea, Barsotti Michele, Bacciu Davide, Ascari Luca
Department of Computer Science, University of Pisa, 56127 Pisa, Italy.
CAMLIN Italy s.r.l., 43121 Parma, Italy.
Bioengineering (Basel). 2021 Feb 5;8(2):21. doi: 10.3390/bioengineering8020021.
Decoding motor intentions from non-invasive brain activity monitoring is one of the most challenging aspects in the Brain Computer Interface (BCI) field. This is especially true in online settings, where classification must be performed in real-time, contextually with the user's movements. In this work, we use a topology-preserving input representation, which is fed to a novel combination of 3D-convolutional and recurrent deep neural networks, capable of performing multi-class continual classification of subjects' movement intentions. Our model is able to achieve a higher accuracy than a related state-of-the-art model from literature, despite being trained in a much more restrictive setting and using only a simple form of input signal preprocessing. The results suggest that deep learning models are well suited for deployment in challenging real-time BCI applications such as movement intention recognition.
从非侵入性脑活动监测中解码运动意图是脑机接口(BCI)领域最具挑战性的方面之一。在在线环境中尤其如此,在这种环境下,必须根据用户的动作实时进行上下文分类。在这项工作中,我们使用了一种拓扑保持输入表示,将其输入到一个由3D卷积和循环深度神经网络组成的新颖组合中,该组合能够对受试者的运动意图进行多类连续分类。尽管我们的模型是在一个限制得多的环境中训练的,并且只使用了一种简单形式的输入信号预处理,但它能够比文献中相关的最先进模型获得更高的准确率。结果表明,深度学习模型非常适合部署在具有挑战性的实时BCI应用中,如运动意图识别。