Corpus ID: 44063836

Learning to Transcribe by Ear

@article{Kelz2018LearningTT,
  title={Learning to Transcribe by Ear},
  author={Rainer Kelz and Gerhard Widmer},
  journal={ArXiv},
  year={2018},
  volume={abs/1805.11526}
}
  • Rainer Kelz, Gerhard Widmer
  • Published in ArXiv 2018
  • Computer Science, Engineering
  • Rethinking how to model polyphonic transcription formally, we frame it as a reinforcement learning task. Such a task formulation encompasses the notion of a musical agent and an environment containing an instrument as well as the sound source to be transcribed. Within this conceptual framework, the transcription process can be described as the agent interacting with the instrument in the environment, and obtaining reward by playing along with what it hears. Choosing from a discrete set of… CONTINUE READING

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