Emotion in the singing voice—a deeperlook at acoustic features in the light ofautomatic classification

被引:0
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作者
Florian Eyben
Gláucia L Salomão
Johan Sundberg
Klaus R Scherer
Björn W Schuller
机构
[1] MISP Group,Department of Speech Music Hearing, School of Computer Science and Communication
[2] Technische Universität München,Department of Computing
[3] KTH (Royal Institute of Technology),Department of Linguistics
[4] Université De Genève,Chair of Complex and Intelligent Systems
[5] Imperial College London,undefined
[6] Stockholm University,undefined
[7] University College of Music Education,undefined
[8] University of Passau,undefined
[9] audEERING UG (limited),undefined
关键词
Emotion recognition; Singing voice; Acoustic features; Feature selection;
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摘要
We investigate the automatic recognition of emotions in the singing voice and study the worth and role of a variety of relevant acoustic parameters. The data set contains phrases and vocalises sung by eight renowned professional opera singers in ten different emotions and a neutral state. The states are mapped to ternary arousal and valence labels. We propose a small set of relevant acoustic features basing on our previous findings on the same data and compare it with a large-scale state-of-the-art feature set for paralinguistics recognition, the baseline feature set of the Interspeech 2013 Computational Paralinguistics ChallengE (ComParE). A feature importance analysis with respect to classification accuracy and correlation of features with the targets is provided in the paper. Results show that the classification performance with both feature sets is similar for arousal, while the ComParE set is superior for valence. Intra singer feature ranking criteria further improve the classification accuracy in a leave-one-singer-out cross validation significantly.
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