基于多层感知器的人类情感谱特征识别

A. Reddy, V. Vijayarajan
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引用次数: 3

摘要

对于情感识别,本文从柏林情感数据库的流行语音样本中提取的特征是基音、强度、对数能量、形成峰、mel-frequency cepal系数(MFCC)作为基本特征,功率谱密度作为频率的附加函数。在这些工作中,我们的研究考虑了七种情绪,即愤怒,中立,快乐,无聊,厌恶,恐惧和悲伤。在建立自动情绪识别模型时,考虑了时间特征和谱特征。使用支持向量机(SVM)对提取的特征进行分析,并结合多层感知器(MLP),采用一类前馈神经网络分类器对不同的情绪状态进行分类。我们观察到,使用支持向量机对愤怒和无聊情绪类的准确率为91%,使用人工神经网络的准确率超过96%,使用支持向量机的总体准确率为87.17%,人工神经网络的总体准确率为94%。
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Recognition of human emotion with spectral features using multi layer-perceptron
For emotion recognition, here the features extracted from prevalent speech samples of Berlin emotional database are pitch, intensity, log energy, formant, mel-frequency ceptral coefficients (MFCC) as base features and power spectral density as an added function of frequency. In these work seven emotions namely anger, neutral, happy, Boredom, disgust, fear and sadness are considered in our study. Temporal and Spectral features are considered for building AER(Automatic Emotion Recognition) model. The extracted features are analyzed using Support Vector Machine (SVM) and with multilayer perceptron (MLP) a class of feed-forward ANN classifiers is/are used to classify different emotional states. We observed 91% accuracy for Angry and Boredom emotional classes by using SVM and more than 96% accuracy using ANN and with an overall accuracy of 87.17% using SVM, 94% for ANN.
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