Improved emotion recognition using GMM-UBMs

Hari Krishna, Vydana P Phani, K. K. Sri, R. Krishna
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引用次数: 13

Abstract

In recent past a lot of scientific attention is paid on recognizing the emotional state of the speaker from his speech. Emotion recognition is a challenging task as human emotions are complex, subtle and emotive state in human speech does not persist long. So it is important to study the presence of emotion identifiable information in smaller segments of speech. This study is aimed at studying the presence of emotional specific information with relevance to the position of the word in the utterance. During the present study, spectral features are employed to represent emotion specific information in speech. Spectral features from smaller speech segments of speech based on their position in the utterance are employed to study the presence of emotion in speech. Due to the lack of adequate data in small speech segments to support conventional GMM during the course of present study Gaussian mixture modeling with a universal background model (GMM-UBM) is used for developing a emotion recognition system. Speech data from IITKGP-SESC is used during the course of the present study. During the present study 4 (Anger, Fear, Happy and Neutral) emotions are considered.
使用GMM-UBMs改善情绪识别
近年来,从说话人的讲话中识别说话人的情绪状态成为科学研究的热点。由于人类情绪复杂、微妙,且言语中的情绪状态持续时间不长,因此情绪识别是一项具有挑战性的任务。因此,在较小的言语片段中研究情感可识别信息的存在是很重要的。本研究旨在研究与词语在话语中的位置相关的情感特定信息的存在。在本研究中,频谱特征被用来表示语音中的情感特定信息。基于较小的语音片段在话语中的位置的频谱特征被用于研究语音中情感的存在。由于在本研究过程中缺乏足够的小语音片段数据来支持传统的GMM模型,因此采用通用背景模型高斯混合建模(GMM- ubm)来开发情感识别系统。在本研究过程中使用了IITKGP-SESC的语音数据。在本研究中,我们考虑了4种情绪(愤怒、恐惧、快乐和中性)。
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