Improved singing voice separation with chromagram-based pitch-aware remixing
Singing voice separation aims to separate music into vocals and accompaniment components. One of the major constraints for the task is the limited amount of training data with separated vocals. Data augmentation techniques such as random source mixing have been shown to make better use of existing d...
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Zusammenfassung: | Singing voice separation aims to separate music into vocals and accompaniment
components. One of the major constraints for the task is the limited amount of
training data with separated vocals. Data augmentation techniques such as
random source mixing have been shown to make better use of existing data and
mildly improve model performance. We propose a novel data augmentation
technique, chromagram-based pitch-aware remixing, where music segments with
high pitch alignment are mixed. By performing controlled experiments in both
supervised and semi-supervised settings, we demonstrate that training models
with pitch-aware remixing significantly improves the test signal-to-distortion
ratio (SDR) |
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DOI: | 10.48550/arxiv.2203.15092 |