Sheet Music Benchmark: Standardized Optical Music Recognition Evaluation
Sheet Music Benchmark: Standardized Optical Music Recognition Evaluation
In this work, we introduce the Sheet Music Benchmark (SMB), a dataset of six hundred and eighty-five pages specifically designed to benchmark Optical Music Recognition (OMR) research. SMB encompasses a diverse array of musical textures, including monophony, pianoform, quartet, and others, all encoded in Common Western Modern Notation using the Humdrum **kern format. Alongside SMB, we introduce the OMR Normalized Edit Distance (OMR-NED), a new metric tailored explicitly for evaluating OMR performance. OMR-NED builds upon the widely-used Symbol Error Rate (SER), offering a fine-grained and detailed error analysis that covers individual musical elements such as note heads, beams, pitches, accidentals, and other critical notation features. The resulting numeric score provided by OMR-NED facilitates clear comparisons, enabling researchers and end-users alike to identify optimal OMR approaches. Our work thus addresses a long-standing gap in OMR evaluation, and we support our contributions with baseline experiments using standardized SMB dataset splits for training and assessing state-of-the-art methods.
Juan C. Martinez-Sevilla、Joan Cerveto-Serrano、Noelia Luna、Greg Chapman、Craig Sapp、David Rizo、Jorge Calvo-Zaragoza
计算技术、计算机技术
Juan C. Martinez-Sevilla,Joan Cerveto-Serrano,Noelia Luna,Greg Chapman,Craig Sapp,David Rizo,Jorge Calvo-Zaragoza.Sheet Music Benchmark: Standardized Optical Music Recognition Evaluation[EB/OL].(2025-06-12)[2025-07-25].https://arxiv.org/abs/2506.10488.点此复制
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