A-MAPS: Augmented MAPS Dataset with Rhythm and Key Annotations

The MAPS dataset is the most used benchmark dataset for automatic music transcription (AMT). We propose here an updated version of the ground truth, containing precise beat, time signature, and key signature annotations.

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