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MuseBench: Benchmarking Intent-Level Audiovisual Arts Understanding in MLLMs

Researchers introduced MuseBench, a benchmark with 4,016 questions evaluating multimodal large language models on intent-level understanding of audiovisual arts across cinema, visual arts, stage performance, and game design. Zero-shot testing of 28 state-of-the-art MLLMs showed the best model achieved only 48.29% accuracy, far below the human expert performance of 87.18%, revealing a significant gap in creative domain expertise.

read1 min views2 publishedJun 29, 2026

Audiovisual arts encompass diverse creative disciplines, including cinema, visual arts, stage performance, and game design, where artistic meaning arises from deliberate combinations of visual, auditory, and narrative elements (e.g., fear amplified through claustrophobic framing, or grief conveyed through silence and lingering close-ups). True artistic understanding extends beyond recognizing what is depicted to reasoning about why it is expressed through particular creative choices. Despite the strong progress of multimodal large language models (MLLMs), this critical aspect of artistic understanding remains underexplored, as existing benchmarks largely measure perceptual recognition while overlooking reasoning about creative intent. To address this gap, we introduce Musebench, a comprehensive benchmark designed to evaluate MLLMs on nuanced artistic understanding. It comprises 4,016 questions spanning cinematic arts, static visual arts, stage performing arts, and game arts, distilled from over 10K candidate video essays that pair professional commentary with visual demonstration. To capture the open-ended nature of artistic analysis at scale, the benchmark combines single-select and variable-option multi-select questions. All questions are generated and refined through a four-phase iterative pipeline combining shortcut filtering, adversarial distractors, and expert validation. Comprehensive zero-shot evaluation of 28 state-of-the-art MLLMs reveals that even the best-performing model achieves only 48.29% accuracy, substantially below human expert performance of 87.18%, exposing a significant gap in current models' creative domain expertise. Category: Uncategorized. Imported rows: 28. Top imported result: Claude-4.6-Opus, rank 1, 48.29.

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