Score: 2

Peransformer: Improving Low-informed Expressive Performance Rendering with Score-aware Discriminator

Published: October 11, 2025 | arXiv ID: 2510.10175v1

By: Xian He, Wei Zeng, Ye Wang

Potential Business Impact:

Makes music sound more human and real.

Business Areas:
Musical Instruments Media and Entertainment, Music and Audio

Highly-informed Expressive Performance Rendering (EPR) systems transform music scores with rich musical annotations into human-like expressive performance MIDI files. While these systems have achieved promising results, the availability of detailed music scores is limited compared to MIDI files and are less flexible to work with using a digital audio workstation (DAW). Recent advancements in low-informed EPR systems offer a more accessible alternative by directly utilizing score-derived MIDI as input, but these systems often exhibit suboptimal performance. Meanwhile, existing works are evaluated with diverse automatic metrics and data formats, hindering direct objective comparisons between EPR systems. In this study, we introduce Peransformer, a transformer-based low-informed EPR system designed to bridge the gap between low-informed and highly-informed EPR systems. Our approach incorporates a score-aware discriminator that leverages the underlying score-derived MIDI files and is trained on a score-to-performance paired, note-to-note aligned MIDI dataset. Experimental results demonstrate that Peransformer achieves state-of-the-art performance among low-informed systems, as validated by subjective evaluations. Furthermore, we extend existing automatic evaluation metrics for EPR systems and introduce generalized EPR metrics (GEM), enabling more direct, accurate, and reliable comparisons across EPR systems.

Country of Origin
πŸ‡ΈπŸ‡¬ Singapore

Repos / Data Links

Page Count
6 pages

Category
Computer Science:
Sound