Publication | Open Access
Music Emotion Recognition with Standard and Melodic Audio Features
35
Citations
34
References
2015
Year
MusicMusic ClassificationPattern RecognitionAffective ComputingMusic ProcessingSocial SciencesStandard AudioAudio RetrievalMultimodal Sentiment AnalysisMelodic FeaturesArtsEmotion RecognitionEmotionMusic Emotion RecognitionOptical Music RecognitionMusicology
We propose a novel approach to music emotion recognition by combining standard and melodic features extracted directly from audio. To this end, a new audio dataset organized similarly to the one used in MIREX mood task comparison was created. From the data, 253 standard and 98 melodic features are extracted and used with several supervised learning techniques. Results show that, generally, melodic features perform better than standard audio. The best result, 64% f-measure, with only 11 features (9 melodic and 2 standard), was obtained with ReliefF feature selection and Support Vector Machines.
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