Corpus ID: 12229880

Using Psycho-Acoustic Models and Self-Organizing Maps to Create a Hierarchical Structuring of Music by Musical Styles

@inproceedings{Rauber2002UsingPM,
  title={Using Psycho-Acoustic Models and Self-Organizing Maps to Create a Hierarchical Structuring of Music by Musical Styles},
  author={Andreas Rauber and Elias Pampalk and Dieter Merkl},
  booktitle={ISMIR},
  year={2002}
}
Andreas Rauber Dept. of Software Technology Vienna Univ. of Technology A-1040 Vienna, Austria andi@ifs.tuwien.ac.at Elias Pampalk Austrian Research Institute for Artificial Intelligence A-1010 Vienna, Austria elias@ai.univie.ac.at Dieter Merkl Dept. of Software Technology Vienna Univ. of Technology A-1040 Vienna, Austria dieter@ifs.tuwien.ac.at ABSTRACT With the advent of large musicalarchives the needto provide an organizationof thesearchivesbecomeseminent.While artist-based organizationsor… Expand
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