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Review on Machine Learning Frameworks in Drivers’ Physiological Signal Analysis to Detect Stress

机译:检测应力的驱动器生理信号分析中的机器学习框架综述

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Nowadays, the performance of classification methods used in physiological signals for healthcare purposes governs computer-based analysis. A prevalent research area in biosignal analysis with the aim of stress recognition and classification is to design algorithms that outperform established approaches. Accurate stress realization in drivers would address significant costs of driving-induced stress and increase drivers' safety if unobstructed and fully automated stress detection devices developed. This procedure faces some challenges such as human stress detection and recognition, along with simulating stress in computing devices. For stress computing, the initial step is to detect stress which requires capturing human state data. The next step is to extract the most relevant features to find meaningful patterns to analyze data which could be performed by mathematical analysis and machine learning tools. In this paper, a review of the recent advancement in signal processing, feature extraction, and machine learning methods with a focus on galvanic skin response (GSR) analysis is presented. This review enlightens the reader with common methodologies, issues, and future opportunities in this research area.
机译:如今,用于医疗保健目的的生理信号中使用的分类方法的性能治理基于计算机的分析。具有应力识别和分类目的的生物关像性分析中的普遍研究领域是设计绩效绩效建立的方法的算法。如果畅通无阻,完全自动化的应力检测装置,驾驶员在驾驶员中的准确压力会解决驾驶引起的压力的显着成本,并提高驱动器安全性。该过程面临诸如人力压力检测和识别等一些挑战,以及计算设备中的模拟应力。对于应力计算,初始步骤是检测需要捕获人状态数据的应力。下一步是提取最相关的功能,以找到有意义的模式来分析可以通过数学分析和机器学习工具执行的数据。本文介绍了对信号处理,特征提取和机器学习方法的最近进步的综述,并提出了一种聚焦电流皮肤响应(GSR)分析。该评论以普通方法,问题和未来机会为全面的读者在本研究领域。

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