Real-time Efficacy of Features Extraction using Machine Learning and Deep Learning for Frontal Alpha Asymmetry.

Y. Hafeez, Syed Saad Azhar Ali, H. Amin, Syed Faraz Naqvi, Syed Hasan Adil, Tang Tong Boon
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Abstract

The frontal alpha asymmetry represents as the neuromarker for stress. Stress is the psycho-physiological state of brain in response to some event or a demand. The continuous monitoring of mental stress is necessary to avoid chronic health issues. The real-time monitoring of frontal alpha asymmetry is necessary in daily life and to help in the therapy for example neurofeedback. In this paper, different approaches of machine learning and deep learning were adopted to extract the frontal alpha asymmetry features. The results analysis was based on the efficacy and the comparison of techniques for feature extraction has also been presented.
基于机器学习和深度学习的前额阿尔法不对称特征提取的实时有效性。
额叶α不对称是压力的神经标记。压力是大脑对某些事件或需求作出反应时的心理生理状态。持续监测精神压力对于避免慢性健康问题是必要的。实时监测额叶α不对称在日常生活中是必要的,并有助于治疗,例如神经反馈。本文采用机器学习和深度学习两种不同的方法提取正面alpha不对称特征。对结果进行了有效性分析,并对特征提取技术进行了比较。
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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