Spiking neural networks (SNNs) are receiving increased attention as a means to develop "biologically plausible" machine learning models. These networks mimic synaptic connections in the human brain and produce spike trains, which can be approximated by binary values, precluding high computational cost with floating-point arithmetic circuits. Recently, the addition of convolutional layers to combine the feature extraction power of convolutional networks with the computational efficiency of SNNs has been introduced. In this paper, the feasibility of using a convolutional spiking neural network (CSNN) as a classifier to detect anticipatory slow cortical potentials related to braking intention in human participants using an electroencephalogram (EEG) was studied. The EEG data was collected during an experiment wherein participants operated a remote controlled vehicle on a testbed designed to simulate an urban environment. Participants were alerted to an incoming braking event via an audio countdown to elicit anticipatory potentials that were then measured using an EEG. The CSNN's performance was compared to a standard convolutional neural network (CNN) and three graph neural networks (GNNs) via 10-fold cross-validation. The results showed that the CSNN outperformed the other neural networks.
翻译:作为开发“生物上合理”的机器学习模型的一种手段,Spik神经网络正在受到越来越多的关注。这些网络模仿人类大脑中的突触连接,并生产钉钉列,这可以以二进制值为近似,排除浮点计算电路的高计算成本。最近,引入了进化层,将卷发网络的特征提取能力与SNN的计算效率结合起来。在本文中,使用一个“卷发神经网络”作为分类器来探测与使用电子脑图(EEEEG)在人类参与者中制动意图有关的预测性慢神经潜力的可行性。在一次实验中收集了EEG数据,参与者在模拟城市环境的试验台上操作了一个遥控控制飞行器。与会者们被提醒通过音频倒计来了解即将到的编动事件,以了解通过EEEG测量的预测性潜力。CSNN的性能与标准革命性神经网络(NNG)相比,通过10个图像网络展示了10个新的神经网络。