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Analysis of feature extraction techniques for improved emotion recognition in presence of additive noise

机译:具有改进情感识别的特征提取技术分析,在添加噪声存在下改善情绪识别

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Recently, studies have been performed on identification and classification of feature extraction for emotion recognition. Recognition rate of Speech Emotion Recognition system (SER) degrades when there exist a noisy environment. This paper suggests a new approach of feature extraction for robust emotion recognition in noisy environment. It demonstrates the use of cochlear filterbank with zero-crossing for frequency estimation and Multiclass Support Vector Machine for classification. Experimental results shows that proposed cochlear feature with Zero Crossing (ZC) gives better accuracy in identifying emotional state in voiced signal compared to baseline approach MFCC. When cochlear filterbank coefficients is combined with prosodic feature (i.e. energy and pitch), recognition rate was found to be improved for the same database by 9.92, 2.5, 3.52 (%) for various noise levels in testing dataset.
机译:最近,已经对情感识别特征提取的鉴定和分类进行了研究。语音情绪识别系统的识别率(SER)在存在嘈杂的环境时劣化。本文表明了一种新的嘈杂环境中强大情绪识别特征提取方法。它演示了使用耳蜗滤波器与零交叉进行频率估计和多字母支持向量机进行分类。实验结果表明,与零交叉(ZC)的提出的耳蜗特征在于与基线方法MFCC相比识别浊音信号中的情绪状态具有更好的准确性。当脚踏滤波器组系数与韵律特征(即能量和音高)组合时,发现识别率为9.92,2.5,3.52(%)在测试数据集中的各种噪声水平的相同数据库得到改善。

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