Khc’s Submissioin for Mirex 2010 Audio Test/train Tasks
نویسندگان
چکیده
Our algorithm focuses on Audio Music Mood Classification task. We propose two mid-level features which can catch the chord tension and roughness of the sound, which have crucial roles in making mood in the music. From the experiment with 132 exemplar songs which MIREX offers, we find that those two features increase the performance of the Audio Music Mood classification system.
منابع مشابه
Mirex 2012: Mood Classification Tasks Submission
In this work, three audio frameworks – Marsyas, MIR Toolbox and PsySound3, were used to extract audio features from the audio samples. These features are then used to train several classification models, resulting in the different versions submitted to MIREX 2012 mood classification task.
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