Hybrid Neuro-Fuzzy Learning Models for Classification of Motion Sickness Levels Using Biosignals

Jis Paul, M. Madheswaran
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Abstract

Motion sickness is all around as long as there is existence of humans and motion. This sickness has been common in numerous people and due to which it has become the focus area of neurological, psychological and physiological researchers. Most common group of this motion sickness pertains to the category of visual sensitivity; also called visual dependence, wherein people become sick due to visual motion. In this research paper, classification of the levels of motion sickness is done by developing classifiers: (1) k-Nearest neighbour (kNN) classifier (2) Fuzzy c-means classifier (3) ELMAN neural classifier (4) Fuzzy-Wavelet neural network classifier. All the developed classifier models are based on variants of machine learning approaches and are designed to overcome the limitation of the conventional binary classification approach. In this work, electroencephalogram (EEG) data, centre of pressure and trajectories of head and waist motion data of 20 people were recorded and the developed classifier models were applied over them to attain the classification accuracy. Features of these multiple biosignals are denoised and extracted over which the classifier models were tested. The proposed technique is simulated in MATLAB simulation environment for the considered candidate data samples. Numerical simulation was carried out and the results prove the superiority and effectiveness of the developed classifiers over the various existing classifier models.
基于生物信号的晕动病分级混合神经-模糊学习模型
只要人类和运动存在,晕动病就无处不在。这种疾病在许多人中很常见,因此它已成为神经学、心理学和生理学研究人员的重点领域。最常见的晕动病属于视觉敏感;也被称为视觉依赖,其中人们因视觉运动而生病。本文通过开发分类器对晕动病的程度进行分类:(1)k近邻(kNN)分类器(2)模糊c均值分类器(3)ELMAN神经分类器(4)模糊小波神经网络分类器。所有已开发的分类器模型都是基于机器学习方法的变体,旨在克服传统二元分类方法的局限性。本研究记录了20人的脑电图数据、压力中心数据和头腰运动轨迹数据,并应用所开发的分类器模型对其进行分类,以获得分类精度。对这些多重生物信号的特征进行去噪和提取,并对分类器模型进行测试。在MATLAB仿真环境中对所考虑的候选数据样本进行了仿真。数值仿真结果证明了所开发的分类器相对于现有的各种分类器模型的优越性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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