Transfer Learning Using Musical Instrument Audio for Improving Automatic Singing Label Calibration
Xiao Fu,
Xijian Rui,
Hangyu Deng
et al.
Abstract:Automatic Singing Label Calibration (ASLC) aims to enhance the labeling accuracy of coarse singing labels through the analysis of raw audio. However, the ASLC model faces limitations due to the challenges and costs associated with generating or augmenting real‐world songs. To address this problem, we propose a novel approach to strengthen limited singing audio using easily available musical instrument audio. Directly using the musical instrument audio as a data augmentation for the singing audio is unreliable … Show more
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