基于呼吸信号的人类情感分类

R. A. Hameed, Mohannad K. Sabir, M. Fadhel, O. Al-Shamma, Laith Alzubaidi
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引用次数: 18

摘要

人与人之间的互动是人类共同表达和拥有的情感。呼吸是反映情绪的参数之一。合理的假设是,不同的呼吸模式与不同的情绪有关,这加强了呼吸和情绪之间联系的证据。例如,在休闲或放松时,呼吸变深变慢,在恐惧或恐惧时呼吸变浅变快,在愤怒或兴奋时呼吸变深变快。在本研究中,呼吸信号,包括特征;气流速率和体积,由BIOPAC仪器获得。提取的特征包括主要特征的Max/Min和Mean/Variance,分别使用快速傅里叶变换(Fast Fourier Transform, FFT)进行分析,使用Orang开源程序进行分类。结果非常成功,80%的人同意,这反过来又被研究人员非常接受。
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Human emotion classification based on respiration signal
Interactions between people commonly expressed and possessed emotions due to the human beings. Respiration is one of the parameters that reflects an emotion. The reasonable hypothesis, that various respiratory patterns are associated with various emotions, has enhanced the evidence for links between respiration and emotion. For instance, breathing turns out to be, deeper and slower at leisure or relief, shallower and faster at scare or terror, and deeper and faster at anger or excitement. In this study, the breathing signals, which include the features; airflow rate and volume, are acquired from the BIOPAC instrument. The extracted features, which include Max/Min and Mean/Variance of the main features, are analyzed using Fast Fourier Transform (FFT) and classified using Orang open source program, respectively. The result is very successful and agreed by 80%, which in turn, extremely accepted by the researchers.
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