Mirex 2008 Audio Music Classification Using a Combination of Spectral, Timbral, Rhythmic, Temporal and Symbolic Features
نویسندگان
چکیده
The novel approach of combining audio and symbolic features for music classification from audio enhanced previous audio-only based results in MIREX 2007. We extended the approach by including temporal audio features, enhancing the polyphonic audio to MIDI transcription system and including an extended set of symbolic features. Recent research in music genre classification hints at a glass ceiling being reached using timbral audio features.
منابع مشابه
Mirex 2009 a Multi-feature-set Multi-classifier Ensemble Approach for Audio Music Classification
The approach of combining a multitude of audio features and also symbolic features (through transcription of audio to MIDI) for music classification proved useful, as shown previously. We extended the system submitted to MIREX 2008 by including temporal audio features, adding another audio analysis algorithm based on finding templates on music, enhancing the polyphonic audio to MIDI transcripti...
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