CVAILGSDASFeb 17, 2025

NOTA: Multimodal Music Notation Understanding for Visual Large Language Model

arXiv:2502.14893v113 citationsh-index: 6Has CodeNAACL
Originality Incremental advance
AI Analysis

This addresses the gap in music notation understanding for visual large language models, enabling better processing of both score images and text annotations.

The authors tackled the problem of multimodal music notation understanding by creating NOTA, the first large-scale multimodal music notation dataset with 1,019,237 records, and trained NotaGPT-7B, which achieved significant improvement in music understanding.

Symbolic music is represented in two distinct forms: two-dimensional, visually intuitive score images, and one-dimensional, standardized text annotation sequences. While large language models have shown extraordinary potential in music, current research has primarily focused on unimodal symbol sequence text. Existing general-domain visual language models still lack the ability of music notation understanding. Recognizing this gap, we propose NOTA, the first large-scale comprehensive multimodal music notation dataset. It consists of 1,019,237 records, from 3 regions of the world, and contains 3 tasks. Based on the dataset, we trained NotaGPT, a music notation visual large language model. Specifically, we involve a pre-alignment training phase for cross-modal alignment between the musical notes depicted in music score images and their textual representation in ABC notation. Subsequent training phases focus on foundational music information extraction, followed by training on music notation analysis. Experimental results demonstrate that our NotaGPT-7B achieves significant improvement on music understanding, showcasing the effectiveness of NOTA and the training pipeline. Our datasets are open-sourced at https://huggingface.co/datasets/MYTH-Lab/NOTA-dataset.

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