首页> 外文会议>International Conference on Applied Human Factors and Ergonomics >Convolutional Neural Network for Hybrid fNIRS-EEG Mental Workload Classification
【24h】

Convolutional Neural Network for Hybrid fNIRS-EEG Mental Workload Classification

机译:用于混合FNIRS-EEG心理工作量分类的卷积神经网络

获取原文

摘要

The classification of workload memory tasks based on fNIRS and EEG signals requires solving high-dimensional pattern classification problems with a relatively small number of training patterns. In the use of conventional machine learning algorithms, feature selection is a fundamental difficulty given the large number of possible features and the small amount of available data. In this study, we bypass the challenges of feature selection and investigate the use of Convolutional Neural Networks (CNNs) for classifying workload memory tasks. CNNs are well suited for learning from the raw data without any a priori feature selection. CNNs take as input two-dimensional images, which differ in structure from the neural time series obtained on the scalp surface using EEG and fNIRS. Therefore, both the existing CNN architectures and fNIRS-EEG input must be adapted to allow fNIRS-EEG input to a CNN. In this work, we describe this adaptation, evaluate the performance of CNN classification of mental workload tasks. This study makes use of an open-source meta-dataset collected at the Technische Universit?t Berlin; including simultaneous EEG and fNIRS recordings of 26 healthy participants during n-back tests. A CNN with three convolution layers and two fully connected layers is adapted to suit the given dataset. ReLU and ELU activation functions are employed to take advantage of their better dampening property in the vanishing gradient problem, fast convergence, and higher accuracy. The results achieved with the two activation functions are compared to select the best performing function. The proposed CNN approach achieves a considerable average improvement relative to conventional methods such as Support Vector Machines. The results across differences in time window length, activation functions, and other hyperparameters are benchmarked for each task. The best result is obtained with a three-second window and the ELU activation function, for which the CNN yields 89% correct class
机译:基于FNIR和EEG信号的工作负载存储器任务的分类需要解决具有相对较少数量的训练模式的高维模式分类问题。在使用传统机器学习算法中,特征选择是给出了大量可能的功能和少量可用数据的基本困难。在这项研究中,我们绕过特征选择的挑战,并调查卷积神经网络(CNNS)的使用来分类工作负载存储器任务。 CNNS非常适合于在没有任何先验特征选择的情况下从原始数据学习。 CNNS作为输入二维图像,其使用EEG和FNIR在头皮表面上获得的神经时间序列不同。因此,必须适于现有的CNN架构和FNIRS-EEG输入来允许FNIRS-EEG输入到CNN。在这项工作中,我们描述了这种调整,评估了CNN分类心理工作量任务的性能。本研究利用Technische Universit收集的开源元数据集?T Berlin;包括在N背部测试期间同时eeg和fnirs录制26名健康参与者。具有三个卷积层和两个完全连接的层的CNN适于适合给定的数据集。 Relu和ELU激活功能用于利用它们在消失的梯度问题,快速收敛性和更高的准确度方面更好地阻尼性。将使用两个激活功能实现的结果进行比较,以选择最佳性能。所提出的CNN方法相对于诸如支持向量机等传统方法实现了相当大的平均改进。跨越时间窗口长度,激活功能和其他超参数的结果为每个任务基准。使用三秒窗口和ELU激活功能获得最佳结果,其中CNN产生89%正确的类

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号