Transfer Learning for Piano Sustain-Pedal Detection
Beici Liang, Gy\"orgy Fazekas, Mark Sandler

TL;DR
This paper introduces a transfer learning approach using CNNs trained on synthetic data to accurately detect sustain-pedal techniques in acoustic piano recordings, improving over previous methods.
Contribution
It presents a novel transfer learning framework that leverages synthetic data to enhance sustain-pedal detection in real acoustic recordings, combining physics-based modeling with deep learning.
Findings
Achieved 0.98 accuracy on synthetic data
Attained 0.89 F-measure on real recordings
Outperformed baseline transfer learning methods
Abstract
Detecting piano pedalling techniques in polyphonic music remains a challenging task in music information retrieval. While other piano-related tasks, such as pitch estimation and onset detection, have seen improvement through applying deep learning methods, little work has been done to develop deep learning models to detect playing techniques. In this paper, we propose a transfer learning approach for the detection of sustain-pedal techniques, which are commonly used by pianists to enrich the sound. In the source task, a convolutional neural network (CNN) is trained for learning spectral and temporal contexts when the sustain pedal is pressed using a large dataset generated by a physical modelling virtual instrument. The CNN is designed and experimented through exploiting the knowledge of piano acoustics and physics. This can achieve an accuracy score of 0.98 in the validation results.…
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