combination of empirical mode decomposition components of hrv signals for discriminating emotional states
Authors
abstract
introduction automatic human emotion recognition is one of the most interesting topics in the field of affective computing. however, development of a reliable approach with a reasonable recognition rate is a challenging task. the main objective of the present study was to propose a robust method for discrimination of emotional responses thorough examination of heart rate variability (hrv). in the present study, considering the non-stationary and non-linear characteristics of hrv, empirical mode decomposition technique was utilized as a feature extraction approach. materials and methods in order to induce the emotional states, images indicating four emotional states, i.e., happiness, peacefulness, sadness, and fearfulness were presented. simultaneously, hrv was recorded in 47 college students. the signals were decomposed into some intrinsic mode functions (imfs). for each imf and different imf combinations, 17 standard and non-linear parameters were extracted. wilcoxon test was conducted to assess the difference between imf parameters in different emotional states. afterwards, a probabilistic neural network was used to classify the features into emotional classes. results based on the findings, maximum classification rates were achieved when all imfs were fed into the classifier. under such circumstances, the proposed algorithm could discriminate the affective states with sensitivity, specificity, and correct classification rate of 99.01%, 100%, and 99.09%, respectively. in contrast, the lowest discrimination rates were attained by imf1 frequency and its combinations. conclusion the high performance of the present approach indicated that the proposed method is applicable for automatic emotion recognition.
similar resources
Combination of Empirical Mode Decomposition Components of HRV Signals for Discriminating Emotional States
Introduction Automatic human emotion recognition is one of the most interesting topics in the field of affective computing. However, development of a reliable approach with a reasonable recognition rate is a challenging task. The main objective of the present study was to propose a robust method for discrimination of emotional responses thorough examination of heart rate variability (HRV). In t...
full textEvaluation of Detrending Method Based on Ensemble Empirical Mode Decomposition for HRV Analysis
Heart rate variability (HRV) is a key indicator for assessing autonomous nervous system activity. Because nonstationary and slow trends which can cause distortion to HRV analysis are usually occurred in HRV signals, detrending scheme is necessary before HRV analysis. Ensemble empirical mode decomposition (EEMD), which offers the ability to break down signals into a set of intrinsic mode functio...
full textAssignment of Empirical Mode Decomposition Components and Its Application to Biomedical Signals.
OBJECTIVES Empirical mode decomposition (EMD) is a frequently used signal processing approach which adaptively decomposes a signal into a set of narrow-band components known as intrinsic mode functions (IMFs). For multi-trial, multivariate (multiple simultaneous recordings), and multi-subject analyses the number and signal properties of the IMFs can deviate from each other between trials, chann...
full textNoise-assisted multivariate empirical mode decomposition for multichannel EMG signals
BACKGROUND Ensemble Empirical Mode Decomposition (EEMD) has been popularised for single-channel Electromyography (EMG) signal processing as it can effectively extract the temporal information of the EMG time series. However, few papers examine the temporal and spatial characteristics across multiple muscle groups in relation to multichannel EMG signals. EXPERIMENT The experimental data was ob...
full textEmpirical mode decomposition based denoising of partial discharge signals
-Empirical Mode Decomposition (EMD) has recently been introduced as a local and fully data-driven technique aimed at analyzing nonstationary signals, by decomposing nonstationary signals into Intrinsic Mode Functions (IMFs). In this contribution, we employ it to process the signals of partial discharge, a typical type of nonstationary signal. Based on the IMFs extracted from the corrupted signa...
full textPitch estimation of noisy speech signals using empirical mode decomposition
This paper presents a pitch estimation method of noisy speech signal using empirical mode decomposition (EMD). The normalized autocorrelation function (NACF) of the noisy speech signal is decomposed into a finite set of band-limited signals termed as intrinsic mode functions (IMFs) using EMD. The periodicity of one IMF is supposed to be equal to the accurate pitch period. A conventional autocor...
full textMy Resources
Save resource for easier access later
Journal title:
iranian journal of medical physicsجلد ۱۳، شماره ۲، صفحات ۸۶-۹۹
Keywords
Hosted on Doprax cloud platform doprax.com
copyright © 2015-2023