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A Real Time EEG Analysis System

机译:实时脑电分析系统

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摘要

Electroencephalographic (EEG) data modeling is useful for developing applications in the areas of healthcare, as well as in the design of brain-computer interface (BCI). We built a system for brain state modeling, which includes a web server that can process uploaded electroencephalographic (EEG) data, store the data in a local database, and perform data analysis on the stored EEG data. This paper introduces a mobile application that is able to interact with the web server to render selected data and display analysis results from the web server. We aim to build an efficient self-adjusting brain wave modeling system that can seamlessly capture and analyze EEG brainwave data. The platform provides user friendly interface with secure data storage and analytics capabilities for wave analysis, statistical analysis, and categorical classification using a number of well-established machine learning algorithms. We also present a systematic method to understand how the variation of raw data sets used in training models affects the accuracy of machine learning algorithms, and then analyze the performance of machine learning algorithms under various computational implementations. Overall, the study describes a successfully built incorporated data analysis platform, and provides preliminary insights into the performance of common machine learning algorithms on the brain wave data sets.
机译:脑电图(EEG)数据建模对于开发医疗保健领域的应用程序以及脑机接口(BCI)的设计非常有用。我们构建了一个用于大脑状态建模的系统,其中包括一个Web服务器,该服务器可以处理上载的脑电图(EEG)数据,将数据存储在本地数据库中,并对存储的EEG数据进行数据分析。本文介绍了一种移动应用程序,该应用程序能够与Web服务器进行交互以呈现所选数据并显示Web服务器的分析结果。我们的目标是建立一个有效的自我调节脑电波建模系统,该系统可以无缝捕获和分析脑电图脑电波数据。该平台提供了用户友好的界面,具有安全的数据存储和分析功能,可使用多种公认的机器学习算法进行波浪分析,统计分析和分类。我们还提供了一种系统的方法来了解训练模型中使用的原始数据集的变化如何影响机器学习算法的准确性,然后在各种计算实现下分析机器学习算法的性能。总体而言,该研究描述了一个成功构建的合并数据分析平台,并提供了对常见机器学习算法在脑电波数据集上的性能的初步见解。

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