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引用次数: 7
摘要
本文的主要目标是建立非线性参数(李雅普诺夫指数)在情感自动分类中的相关性,用于罗马尼亚语。计算了MFCC mel频率倒谱系数和LPCC线性预测倒谱系数的最大Lyapunov指数LLE。对于包含LLE的特征向量,支持向量机- SVM分类器比加权k近邻- WKNN分类器在情感识别方面提供了更好的结果(约75%)。SVM分类器识别效果最好的是中性语气,其次是悲伤、愤怒,识别效果最差的是喜悦语气。对于包含LLE的特征向量,分别结合LAR - Log Area Ratio系数和PARCOR -偏相关系数得到了最好的结果。
Using the Lyapunov exponent from cepstral coefficients for automatic emotion recognition
The main goal of this paper is to establish the relevance of nonlinear parameters (Lyapunov exponents) in the automatic classification of emotions, for the Romanian language. The Largest Lyapunov Exponent - LLE was computed for the MFCC mel frequency cepstral coefficients and the LPCC linear prediction cepstral coefficients. The Support Vector Machine - SVM classifier provides better results than Weighted K-Nearest Neighbors - WKNN classifier in emotion recognition for feature vectors that contains LLE (around 75%). The best recognized by using SVM classifier was the neutral tone, followed by the sadness, fury and the weakest recognized was the joy. For features vectors which include LLE the best results was obtained in combination with LAR - Log Area Ratio coefficients, respectively PARCOR - partial correlation coefficients.