Quantitative ECG based emotion state recognition using Detrended Fluctuation Analysis

Q4 Engineering
Meena Anandan, Pandiyarasan Veluswamy, Rohini Palanisamy
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引用次数: 0

Abstract

Abstract Wearable emotion recogniton system is essential in identifying mental health disorders by early detection and continuous monitoring of human emotions to provide proper treatment care. Electrocardiogram (ECG) signals can be used for emotion recognition for its noninvasiveness and easy usability. In this study, Detrended Fluctuation Analysis (DFA) and Extreme Gradient Boost (XG Boost) classifier is used to classify the scary and boring emotion from the ECG signals. For this, ECG signal corresponding to these emotions are obtained from public database. The preprocessing is performed by adding the video IDs to the signal and annotating it. This preprocessed signal is subjected to DFA to understand the power-law correlations and similarity property. Further, from the power law correlations, features namely Hurst exponent and DFA intercept are extracted. These features are subjected to XG Boost classifier to differentiate the two emotions. Results shows that the log-log plot of power law correlation is linear in nature which indicates that ECG signals of both the emotions have long range correlations and self-similarity property. The extracted scaling exponent indicates variations between scary and boring with a mean and standard deviation of 0.81±0.13 and 0.68±0.07 respectively. Similarly, DFA intercept provides mean and standard deviation for scary and boring 0.15±0.06 and 0.17±0.07 respectively, showing less variability in the ECG signal. XG Boost classifier gives accuracy of 80.5% for classifying scary and boring emotion. Thus, the proposed approach can be used for wearable emotion recognition system to differentiate scary and boring emotion.
基于非趋势波动分析的定量心电情绪状态识别
可穿戴情绪识别系统是通过早期发现和持续监测人类情绪来识别精神健康障碍,从而提供适当治疗护理的关键。心电图信号具有无创性和易用性等特点,可用于情绪识别。本研究采用去趋势波动分析(DFA)和极限梯度提升(XG Boost)分类器对心电信号中的恐怖情绪和无聊情绪进行分类。为此,从公共数据库中获取与这些情绪相对应的心电信号。预处理通过将视频id添加到信号中并对其进行注释来完成。对预处理后的信号进行DFA分析,以了解幂律相关性和相似特性。进一步,从幂律相关性中提取特征,即Hurst指数和DFA截距。这些特征被置于XG Boost分类器中以区分两种情绪。结果表明,幂律相关的对数对数图本质上是线性的,表明两种情绪的心电信号具有较长的相关性和自相似性。提取的尺度指数表示吓人和无聊之间的差异,均值和标准差分别为0.81±0.13和0.68±0.07。同样,DFA截距对恐怖和无聊的平均值和标准差分别为0.15±0.06和0.17±0.07,心电信号变异性较小。XG Boost分类器对恐怖和无聊情绪的分类准确率为80.5%。因此,该方法可用于可穿戴式情绪识别系统,以区分恐怖和无聊的情绪。
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来源期刊
Current Directions in Biomedical Engineering
Current Directions in Biomedical Engineering Engineering-Biomedical Engineering
CiteScore
0.90
自引率
0.00%
发文量
239
审稿时长
14 weeks
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