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基于心电图的情绪识别系统及其在医疗保健中的应用综述。

Electrocardiogram-Based Emotion Recognition Systems and Their Applications in Healthcare-A Review.

机构信息

Faculty of Engineering and Technology, Multimedia University, Melaka 75450, Malaysia.

Center for Artificial Intelligence (CAI), King Khalid University, Abha 61421, Saudi Arabia.

出版信息

Sensors (Basel). 2021 Jul 23;21(15):5015. doi: 10.3390/s21155015.

Abstract

Affective computing is a field of study that integrates human affects and emotions with artificial intelligence into systems or devices. A system or device with affective computing is beneficial for the mental health and wellbeing of individuals that are stressed, anguished, or depressed. Emotion recognition systems are an important technology that enables affective computing. Currently, there are a lot of ways to build an emotion recognition system using various techniques and algorithms. This review paper focuses on emotion recognition research that adopted electrocardiograms (ECGs) as a unimodal approach as well as part of a multimodal approach for emotion recognition systems. Critical observations of data collection, pre-processing, feature extraction, feature selection and dimensionality reduction, classification, and validation are conducted. This paper also highlights the architectures with accuracy of above 90%. The available ECG-inclusive affective databases are also reviewed, and a popularity analysis is presented. Additionally, the benefit of emotion recognition systems towards healthcare systems is also reviewed here. Based on the literature reviewed, a thorough discussion on the subject matter and future works is suggested and concluded. The findings presented here are beneficial for prospective researchers to look into the summary of previous works conducted in the field of ECG-based emotion recognition systems, and for identifying gaps in the area, as well as in developing and designing future applications of emotion recognition systems, especially in improving healthcare.

摘要

情感计算是一门将人类情感和情绪与人工智能集成到系统或设备中的学科。具有情感计算功能的系统或设备有助于减轻压力、痛苦或抑郁的个体的心理健康和幸福感。情感识别系统是实现情感计算的一项重要技术。目前,有很多方法可以使用各种技术和算法来构建情感识别系统。本文主要关注采用心电图 (ECG) 作为单一模态方法以及作为情感识别系统多模态方法一部分的情感识别研究。本文对数据采集、预处理、特征提取、特征选择和降维、分类和验证等方面进行了批判性观察。本文还重点介绍了准确率高于 90%的架构。本文还回顾了包含 ECG 的可用情感数据库,并进行了流行度分析。此外,本文还回顾了情感识别系统对医疗保健系统的益处。基于文献综述,本文提出并总结了对该主题的深入讨论和未来工作的建议。本文提出的研究结果有助于未来的研究人员了解基于 ECG 的情感识别系统领域的以往研究工作的总结,以及识别该领域的空白,并开发和设计未来情感识别系统的应用,特别是在改善医疗保健方面。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/122a/8348698/a19f7c4c2178/sensors-21-05015-g001.jpg

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