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引用次数: 2
摘要
建立了一种基于人工神经网络(ANN)的情绪识别系统,并与基于高斯混合建模(GMM)的情绪识别系统进行了比较。这两个系统都建立在概率模式识别和声学语音建模方法的基础上。由于我们的母语是卡纳达语,这是一种非常丰富的印度语言,我们使用卡纳达语的单词来训练和测试这些方案。由于Mel频率倒谱系数(Mel Frequency Cepstral Coefficients, MFCC)是众所周知的语音声学特征[1][2][4],我们在语音特征提取中使用了Delta MFCC和双Delta MFCC向量。最后,对这些模型在情绪错误率(EER)方面的性能分析证明了使用人工神经网络建模比其他建模方案产生更好的结果,可以用于开发自动情绪识别系统。
Comparison of Artificial Neural Network and Gaussian Mixture Model Based Machine Learning Techniques Using DDMFCC Vectors for Emotion Recognition in Kannada
We build an emotion recognition system based on Artificial Neural Network (ANN) and compare the same with the one based upon the Gaussian Mixture Modeling (GMM) scheme. Both the systems were built upon probabilistic pattern recognition and acoustic phonetic modelling approaches. Since our native language is Kannada, one of the very rich Indian language, we have used words uttered in Kannada to train and test the schemes. Since Mel Frequency Cepstral Coefficients (MFCC) are well known acoustic features of speech [1] [2] [4], we have used the Delta MFCC and the Double Delta MFCC vectors in speech feature extraction. Finally, performance analysis of these models in terms of Emotion Error Rate (EER) justifies the fact that modeling using the ANN yields better results over other modeling schemes and can be used in developing Automatic Emotion Recognition systems.