Artificial bandwidth extension to improve automatic emotion recognition from narrow-band coded speech

A. Albahri, C. S. Rodriguez, M. Lech
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引用次数: 3

Abstract

Narrow-band speech coding techniques were previously found to reduce the accuracy of automatic Speech Emotion Recognition (SER), as well as speech and speaker recognition rates. Artificial Bandwidth Extension (ABE) based on spectral folding and spectral envelope estimation has been applied to compressed narrowband speech to test if an improvement in SER can be achieved. The modelling and classification of speech was performed with a benchmark approach based on the GMM classifier and a set of speech acoustic parameters including MFCCs, TEO and glottal parameters. The tests used the Berlin Emotional Speech data base. In general, ABE led to an improvement of SER accuracy; however the amount of improvement varied between different features, genders, and speech compression rates. In all cases, SER accuracy with ABE was at least 10% lower than for uncompressed speech.
人工带宽扩展改进窄带编码语音的自动情感识别
窄带语音编码技术先前被发现会降低自动语音情感识别(SER)的准确性,以及语音和说话人的识别率。将基于频谱折叠和频谱包络估计的人工带宽扩展(ABE)应用于压缩窄带语音,以测试是否可以实现SER的改进。基于GMM分类器和一组包括mfccc、TEO和声门参数在内的语音声学参数,采用基准方法对语音进行建模和分类。测试使用了柏林情感演讲数据库。总的来说,ABE导致了SER精度的提高;然而,在不同的特征、性别和语音压缩率之间,改善的程度是不同的。在所有情况下,ABE的SER准确率至少比未压缩语音低10%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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