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Correlation of EEG Images and Speech Signals forEmotion Analysis

机译:脑电图和语音信号的相关性以进行情感分析

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Aims: The paper anticipates the correlation of EEG images and speech signals for understanding the emotions.Study Design: The study focuses on recognition of emotions using EEG images and speech signals using various image processing and statistical techniques. For correlating these two modalities, Person’s correlation coefficient is used.Place and Duration of Study: System Communication Machine Learning Research Lab (SCM-RL).Department of Computer Science and Information Technology, Dr. Babasaheb Ambedkar Marathwada?? University, Aurangabad, India. 2009 - till date.Methodology: The study was performed using the data from 10 volunteers 5 boys and 5 girls, vocally sharing the experiences for happy and sad emotional states. Image processing techniques were employed to extract features from EEG images. A Threshold and Sobel Edge detection technique is used to extract the active regions of the brain during the emotional states. ?MatlabR2012 is used to calculate the active size of EEG images. PRAAT software is used to extract the features of speech signals. Pitch, intensity and RMS energy parameters were used for the analysis of speech features.? The correlation is calculated using size of active region from EEG images with pitch and intensity for said emotional state.Results: The correlation of EEG images with speech signals is implemented using SPSS software using Person’s correlation coefficient with significance of about 95% which can further be inspected in results.Conclusion: The correlation of both EEG images and speech signals found to be between moderate to strong relationship and is signified through p value which is in the range of .001 to .081 in happy emotional state and .000 to .069 in sad emotional state. The results can be utilized in making the Robust Emotion Recognition System (ERS). This research study can also found to be significant in research domains like forensic science, psychology and many other applications of Brain Computer Interface.
机译:目的:本文旨在预测脑电图图像和语音信号之间的相互关系,以理解情绪。研究设计:本研究的重点是利用脑电图图像和语音信号通过各种图像处理和统计技术对情绪进行识别。为了使这两种模态相关,使用了人的相关系数。研究的地点和持续时间:系统通信机器学习研究实验室(SCM-RL)。计算机科学与信息技术系Babasaheb Ambedkar Marathwada博士?印度奥兰加巴德大学。 2009年至今:方法:这项研究是使用来自10名志愿者(5名男孩和5名女孩)的数据进行的,他们在口头上分享了快乐和悲伤情绪状态的经历。图像处理技术被用来从脑电图图像中提取特征。阈值和Sobel边缘检测技术用于提取情绪状态下大脑的活动区域。 MatlabR2012用于计算EEG图像的有效大小。 PRAAT软件用于提取语音信号的特征。音调,强度和RMS能量参数用于分析语音特征。结果是:使用SPSS软件使用人的相关系数(具有大约95%的显着性)使用SPSS软件实现脑电图图像与语音信号之间的相关关系,并使用活动区域的大小从脑电图图像中的活动区域的大小进行计算。结论:结论:脑电图图像和语音信号之间的相关性处于中等至强关系之间,并通过p值表示,该p值在快乐情绪状态下介于0.001至.081之间,在0.000至0.069之间。处于悲伤的情绪状态。结果可用于制作鲁棒的情绪识别系统(ERS)。这项研究还可以在法医学,心理学和脑计算机接口的许多其他应用等研究领域中发挥重要作用。

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