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首页> 外文期刊>International Journal of Computer Applications in Technology >A multi-functional BCI system for exigency assistance and environment control based on ML and IoT
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A multi-functional BCI system for exigency assistance and environment control based on ML and IoT

机译:基于ML和IOT的全函数BCI系统,基于ML和IOT的环境控制

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Brain-Computer Interface (BCI) is a modality to create an interface which sustains bidirectional communication between the brain and computers. Major disadvantages in implementing such systems are the bulky design and system cost. This study implements a simple multifunction BCI system for the environment control and exigency assistance by just using single channel Electroencephalogram (EEG). In the proposed model, the environment is controlled through Internet of Things (IoT) as per individual's cognitive state while for exigency assistance served as per Event Related Potential (ERP) observed during oddball paradigm. Arduino microcontroller (AMC) hardware is designed for controlling environment. Different Machine Learning (ML) algorithms observed for training the classifiers. Weighted k-Nearest Neighbour (Wk-NN) algorithm trained classifier delivers the best result, with accuracy of 98.3% to detect ERP and 95% accuracy for cognitive state detection. The simple, low cost prototype system was tested for environment control and assistance.
机译:脑电脑界面(BCI)是创建一个界面的态度,该界面维持大脑和计算机之间的双向通信。实施此类系统的主要缺点是庞大的设计和系统成本。本研究通过使用单通道脑电图(EEG)实现了用于环境控制和宽任辅助的简单多功能BCI系统。在所提出的模型中,环境通过根据个人的认知状态(IOT)互联网(物联网)控制环境,而在奇怪的范式范围期间观察到的事件相关电位(ERP)的情况下提供的急救辅助。 Arduino微控制器(AMC)硬件设计用于控制环境。观察到培训分类器的不同机器学习(ML)算法。加权K-CORMATE邻(WK-NN)算法训练有素的分类器可提供最佳结果,精度为98.3%,以检测ERP和95%的认知状态检测精度。对环境控制和帮助进行了简单的低成本原型系统。

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