Corpus ID: 21047201

Deep rank-based transposition-invariant distances on musical sequences

@article{Hadjeres2017DeepRT,
  title={Deep rank-based transposition-invariant distances on musical sequences},
  author={Ga{\"e}tan Hadjeres and F. Nielsen},
  journal={ArXiv},
  year={2017},
  volume={abs/1709.00740}
}
  • Gaëtan Hadjeres, F. Nielsen
  • Published 2017
  • Computer Science
  • ArXiv
  • Distances on symbolic musical sequences are needed for a variety of applications, from music retrieval to automatic music generation. These musical sequences belong to a given corpus (or style) and it is obvious that a good distance on musical sequences should take this information into account; being able to define a distance ex nihilo which could be applicable to all music styles seems implausible. A distance could also be invariant under some transformations, such as transpositions, so that… CONTINUE READING

    Figures and Topics from this paper.

    References

    Publications referenced by this paper.
    SHOWING 1-10 OF 31 REFERENCES
    Polyphonic Alignment Algorithms for Symbolic Music Retrieval
    • 8
    Sampling Variations of Sequences for Structured Music Generation
    • 21
    • PDF
    Including Interval Encoding into Edit Distance Based Music Comparison and Retrieval
    • 70
    • PDF
    On Optimizing the Editing Algorithms for Evaluating Similarity Between Monophonic Musical Sequences
    • 37
    • PDF
    Comparison of musical sequences
    • 327
    • PDF
    Sampling Variations of Lead Sheets
    • 6
    • PDF
    Sequence to Sequence Learning with Neural Networks
    • 10,514
    • PDF
    Singing from the same sheet: computational melodic similarity measurement and copyright law
    • 14
    • PDF