Knowledge Engineering and Discovery Research Institute, Auckland University of Technology, AUT Tower, Level 7, cnr Rutland and Wakefield Street, Auckland, 1010, New Zealand.
Department of Information Technology, Faculty of Information Technology, University of Moratuwa, Katubedda, Sri Lanka.
Sci Rep. 2021 Jan 28;11(1):2486. doi: 10.1038/s41598-021-81805-4.
Compared to the abilities of the animal brain, many Artificial Intelligence systems have limitations which emphasise the need for a Brain-Inspired Artificial Intelligence paradigm. This paper proposes a novel Brain-Inspired Spiking Neural Network (BI-SNN) model for incremental learning of spike sequences. BI-SNN maps spiking activity from input channels into a high dimensional source-space which enhances the evolution of polychronising spiking neural populations. We applied the BI-SNN to predict muscle activity and kinematics from electroencephalography signals during upper limb functional movements. The BI-SNN extends our previously proposed eSPANNet computational model by integrating it with the 'NeuCube' brain-inspired SNN architecture. We show that BI-SNN can successfully predict continuous muscle activity and kinematics of upper-limb. The experimental results confirmed that the BI-SNN resulted in strongly correlated population activity and demonstrated the feasibility for real-time prediction. In contrast to the majority of Brain-Computer Interfaces (BCIs) that constitute a 'black box', BI-SNN provide quantitative and visual feedback about the related brain activity. This study is one of the first attempts to examine the feasibility of finding neural correlates of muscle activity and kinematics from electroencephalography using a brain-inspired computational paradigm. The findings suggest that BI-SNN is a better neural decoder for non-invasive BCI.
与动物大脑的能力相比,许多人工智能系统都存在局限性,这强调了需要采用类脑人工智能范式。本文提出了一种新颖的基于脑启发的尖峰神经网络(BI-SNN)模型,用于尖峰序列的增量学习。BI-SNN 将输入通道的尖峰活动映射到一个高维源空间中,从而增强了多同步尖峰神经群体的进化。我们将 BI-SNN 应用于预测上肢功能运动期间的脑电图信号中的肌肉活动和运动学。BI-SNN 通过将其与“NeuCube”脑启发 SNN 架构集成,扩展了我们之前提出的 eSPANNet 计算模型。我们表明 BI-SNN 可以成功预测上肢的连续肌肉活动和运动学。实验结果证实,BI-SNN 导致了高度相关的群体活动,并证明了实时预测的可行性。与构成“黑盒”的大多数脑机接口(BCI)不同,BI-SNN 提供了有关相关脑活动的定量和可视化反馈。这项研究是首次尝试使用基于脑启发的计算范例从脑电图中寻找肌肉活动和运动学的神经相关性的研究之一。研究结果表明,BI-SNN 是一种更好的用于非侵入性 BCI 的神经解码器。