Machine Learning and EEG for Emotional State Estimation

K. Kotowski, K. Stapor
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引用次数: 2

Abstract

Defining “emotion” and its accurate measuring is a notorious problem in the psychology domain. It is usually addressed with subjective self-assessment forms filled manually by participants. Machine learning methods and EEG correlates of emotions enable to construction of automatic systems for objective emotion recognition. Such systems could help to assess emotional states and could be used to improve emotional perception. In this chapter, we present a computer system that can automatically recognize an emotional state of a human, based on EEG signals induced by a standardized affective picture database. Based on the EEG signal, trained deep neural networks are then used together with mappings between emotion models to predict the emotions perceived by the participant. This, in turn, can be used for example in validation of affective picture databases standardization.
情绪状态估计的机器学习与脑电图
在心理学领域,“情绪”的定义及其精确测量是一个臭名昭著的问题。它通常是通过参与者手动填写的主观自我评估表格来解决的。机器学习方法和情绪的脑电图关联为构建客观情绪识别的自动系统提供了基础。这样的系统可以帮助评估情绪状态,并可以用来提高情绪感知。在本章中,我们提出了一个基于标准化情感图片数据库诱导的脑电图信号的计算机系统,该系统可以自动识别人类的情绪状态。基于脑电信号,将训练好的深度神经网络与情绪模型之间的映射相结合,预测参与者感知到的情绪。反过来,这可以用于例如情感图片数据库标准化的验证。
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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