ABM在频谱特征识别中的应用

Semiye Demircan, H. Kahramanli
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引用次数: 4

摘要

基于语音信号的情感识别是近年来研究热点之一。众所周知,特征提取和特征选择是语音信号识别中最重要的处理步骤。本研究的目的是选择最相关的光谱特征子集。该方法基于从语音信号中获取的特征进行特征选择和优化算法。首先,从EmoDB中提取Mel-Frequency倒频谱系数(MFCC);从MFCC中获得了最大值、最小值、平均值、标准差、偏度、峰度和中位数等统计值。接下来的研究过程是特征选择,分两个阶段进行:第一阶段将难以应用于该领域的ABM (Agent-Based modeling)应用于实际特征。第二阶段采用opt - ainet优化算法,选择分类成功率最高的智能体组。研究的最后一个过程是分类。采用人工神经网络(ANN)和10次交叉验证进行分类和评价。应用程序对三种情绪进行了狭义的理解。结果表明,应用该方法后,分类精度有所提高。该方法具有良好的光谱特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of ABM to Spectral Features for Emotion Recognition
ER (Emotion Recognition) from speech signals has been among the attractive subjects lately. As known feature extraction and feature selection are most important process steps in ER from speech signals. The aim of present study is to select the most relevant spectral feature subset. The proposed method is based on feature selection with optimization algorithm among the features obtained from speech signals. Firstly, MFCC (Mel-Frequency Cepstrum Coefficients) were extracted from the EmoDB. Several statistical values as maximum, minimum, mean, standard deviation, skewness, kurtosis and median were obtained from MFCC. The next process of study was feature selection which was performed in two stages: In the first stage ABM (Agent-Based Modelling) that is hardly applied to this area was applied to actual features. In the second stageOpt-aiNET optimization algorithm was applied in order to choose the agent group giving the best classification success. The last process of the study is classification. ANN (Artificial Neural Network) and 10 cross-validations were used for classification and evaluation. A narrow comprehension with three emotions was performed in the application. As a result, it was seen that the classification accuracy was rising after applying proposed method. The method was shown promising performance with spectral features.
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