A Method for Modelling and Simulation the Changes Trend of Emotions in Human Speech

Reza Ashrafidoost, S. Setayeshi
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引用次数: 2

Abstract

One of the fastest and richest methods, which represents emotional profile of human beings is speech. It also conveys the mental and perceptual concepts between humans. In this paper we have addressed the recognition of emotional characteristics of speech signal and propose a method to model the emotional changes of the utterance during the speech by using a statistical learning method. In this procedure of speech recognition, the internal feelings of the individual speaker are processed, and then classified during the speech. And so on, the system classifies emotions of the utterance in six standard classes including, anger, boredom, fear, disgust, neutral and sadness. For that reason, we call the standard and widely used speech database, EmoDB for training phase of proposed system. When pre-processing tasks done, speech patterns and features are extracted by MFCC method, and then we apply a classification approach based on statistical learning classifier to simulate changes trend of emotional states. Empirical experimentation indicates that we have achieved 85.54% of average accuracy rate and the score 2.5 of standard deviation in emotion recognition.
人类语言中情绪变化趋势的建模与仿真方法
语言是最快速、最丰富的表达人类情感侧面的方法之一。它还传达了人与人之间的心理和感性概念。本文研究了语音信号的情感特征识别问题,提出了一种利用统计学习方法对语音过程中话语的情感变化进行建模的方法。在这个语音识别过程中,对说话者个人的内心感受进行处理,然后在说话过程中进行分类。以此类推,该系统将话语的情绪分为愤怒、无聊、恐惧、厌恶、中性和悲伤六个标准类别。因此,我们将标准的、被广泛使用的语音数据库EmoDB作为本系统的训练阶段。预处理任务完成后,采用MFCC方法提取语音模式和特征,然后采用基于统计学习分类器的分类方法模拟语音情绪状态的变化趋势。实证实验表明,我们在情绪识别中达到了85.54%的平均准确率和2.5分的标准差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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