Keywords: Music understnading, Multimodal Large Language Model
TL;DR: A large-scale benchmark and a large language model for music understanding
Abstract: We present OpenMU-Bench, a large-scale benchmark suite for addressing the data scarcity issue in training multimodal language models to understand music. To construct OpenMU-Bench, we leveraged existing datasets and bootstrapped new annotations.
OpenMU-Bench also broadens the scope of music understanding by including lyrics understanding and music tool usage. Using OpenMU-Bench, we trained our music understanding model, OpenMU, with extensive ablations, demonstrating that OpenMU outperforms baseline models such as MU-Llama. Both OpenMU and OpenMU-Bench are open-sourced to facilitate future research in music understanding and to enhance creative music production efficiency\footnote{We will release the code, datasets, and model checkpoints upon acceptance.}.
Primary Area: applications to computer vision, audio, language, and other modalities
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Submission Number: 4196
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