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首页> 外文期刊>Computer speech and language >Spoken emotion recognition through optimum-path forest classification using glottal features
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Spoken emotion recognition through optimum-path forest classification using glottal features

机译:利用声门特征通过最佳路径森林分类进行口头情绪识别

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摘要

A new method for the recognition of spoken emotions is presented based on features of the glottal airflow signal. Its effectiveness is tested on the new optimum path classifier (OPF) as well as on six other previously established classification methods that included the Gaussian mixture model (GMM), support vector machine (SVM), artificial neural networks -multi layer perceptron (ANN-MLP), k-nearest neighbor rule (k-NN), Bayesian classifier (BC) and the C4.5 decision tree. The speech database used in this work was collected in an anechoic environment with ten speakers (5 M and 5 F) each speaking ten sentences in four different emotions: Happy, Angry, Sad, and Neutral. The glottal waveform was extracted from fluent speech via inverse filtering. The investigated features included the glottal symmetry and MFCC vectors of various lengths both for the glottal and the corresponding speech signal. Experimental results indicate that best performance is obtained for the glottal-only features with SVM and OPF generally providing the highest recognition rates, while for GMM or the combination of glottal and speech features performance was relatively inferior. For this text dependent, multi speaker task the top performing classifiers achieved perfect recognition rates for the case of 6th order glottal MFCCs.
机译:提出了一种基于声门气流信号特征的语音识别方法。在新的最佳路径分类器(OPF)以及先前建立的其他六种分类方法(包括高斯混合模型(GMM),支持向量机(SVM),人工神经网络-多层感知器(ANN- MLP),k最近邻规则(k-NN),贝叶斯分类器(BC)和C4.5决策树。这项工作中使用的语音数据库是在一个无声的环境中收集的,该环境中有十个说话者(5 M和5 F),每个说话者用四种不同的情感(快乐,生气,悲伤和中立)讲十句话。通过逆滤波从流利的语音中提取声门波形。研究的特征包括声门对称性和声门和相应语音信号的各种长度的MFCC向量。实验结果表明,只有SVM和OPF才能提供最佳识别性能,而SVM和OPF通常提供最高的识别率,而对于GMM或结合声门和语音功能,性能相对较差。对于这种依赖文本的多说话者任务,在六阶声门MFCC的情况下,性能最高的分类器获得了理想的识别率。

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