论文标题

一种新型的基于胶囊的胶囊神经网络模型,用于使用脑电图信号的嗜睡检测

A Novel Capsule Neural Network Based Model for Drowsiness Detection Using Electroencephalography Signals

论文作者

Guarda, Luis, Tapia, Juan, Droguett, Enrique Lopez, Ramos, Marcelo

论文摘要

早期对嗜睡的发现对于确保多个行业任务的正确和安全开发至关重要。由于机敏和嗜睡之间人类受试者的瞬时精神状态,自动嗜睡检测是一个复杂的问题。脑电图信号使我们能够记录个人大脑电位的变化,其中每个人都提供了有关受试者精神状态的特定信息。但是,由于这种信号的性质,其收购通常很复杂,因此很难拥有大量数据来将深度学习技术应用于处理和分类。然而,胶囊神经网络是一种全新的深度学习算法,该算法用于减少数据的工作。处理数据的层次关系是一种强大的算法,这是生物医学信号工作的重要特征。因此,本文通过使用脑电图信号通道的频谱图图像的串联来提出了一种基于学习的深度嗜睡方法。将提出的CAPSNET模型与卷积神经网络进行了比较,卷积神经网络的表现超过了拟议的模型,该模型的平均准确性为86,44%和87,57%的敏感性,平均准确性为75,86%和79,47%的敏感性,对CNN的敏感性为79,47%。

The early detection of drowsiness has become vital to ensure the correct and safe development of several industries' tasks. Due to the transient mental state of a human subject between alertness and drowsiness, automated drowsiness detection is a complex problem to tackle. The electroencephalography signals allow us to record variations in an individual's brain's electrical potential, where each of them gives specific information about a subject's mental state. However, due to this type of signal's nature, its acquisition, in general, is complex, so it is hard to have a large volume of data to apply techniques of Deep Learning for processing and classification optimally. Nevertheless, Capsule Neural Networks are a brand-new Deep Learning algorithm proposed for work with reduced amounts of data. It is a robust algorithm to handle the data's hierarchical relationships, which is an essential characteristic for work with biomedical signals. Therefore, this paper presents a Deep Learning-based method for drowsiness detection with CapsNet by using a concatenation of spectrogram images of the electroencephalography signals channels. The proposed CapsNet model is compared with a Convolutional Neural Network, which is outperformed by the proposed model, which obtains an average accuracy of 86,44% and 87,57% of sensitivity against an average accuracy of 75,86% and 79,47% sensitivity for the CNN, showing that CapsNet is more suitable for this kind of datasets and tasks.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源