MulTTiPop: A Multitrack Transcription Dataset for Pop Music
We present MulTTiPop, a dataset of pop music segments and their associated multitrack MIDI recordings for the evaluation of automatic music transcription models. MulTTiPop contains 572 segments of popular music totaling 3.5 hours of audio, and contains songs from diverse genres and decades from the 1930s to 2000s. To collect this dataset, we perform metadata-based matching on song segments from the Lakh MIDI and TheoryTab datasets, manually identify an anchor beat between the audio and MIDI, then use beat tracking on the audio and warp the MIDI to match its tempo and timing. We evaluate state-
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- Linked via arxiv authorNathan Pruyne →
MulTTiPop: A Multitrack Transcription Dataset for Pop Music
- Linked via arxiv authorBenjamin Stoler →
MulTTiPop: A Multitrack Transcription Dataset for Pop Music
- Linked via arxiv authorWilliam Chen →
MulTTiPop: A Multitrack Transcription Dataset for Pop Music
- Linked via arxiv authorChien-yu Huang →
MulTTiPop: A Multitrack Transcription Dataset for Pop Music
- Linked via arxiv authorShinji Watanabe →
MulTTiPop: A Multitrack Transcription Dataset for Pop Music
- Linked via arxiv authorChris Donahue →
MulTTiPop: A Multitrack Transcription Dataset for Pop Music
