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arXiv 提交日期: 2026-05-27
📄 Abstract - MTAVG-Bench 2.0: Diagnosing Failure Modes of Cinematic Expressiveness in Multi-Talker Audio-Video Generation

In recent years, Multi-Talker Audio-Video Generation (MTAVG) models have shown promising performance on fundamental metrics such as lip-sync and audio-visual alignment. However, these metrics remain insufficient for assessing cinematic expressiveness in scene-level generation. In multi-character scenes, generation models must go beyond audio-visual realism to convey coherent character performance and other higher-level cinematic qualities. To fill this gap, we introduce MTAVG-Bench 2.0, a benchmark for diagnosing failure modes of cinematic expressiveness in multi-talker audio-video generation. Unlike prior settings that mainly focus on the quality of basic multi-turn dialogue, MTAVG-Bench 2.0 targets short-drama and scene-level generation, and establishes a high-level failure taxonomy spanning acting, narrative, atmosphere, and audio-visual language. Based on this taxonomy, we construct more than 10,000 question-answering evaluation instances, together with subsets for short-drama-level assessment and temporal localization of failure modes, to systematically evaluate the ability of omni large language models to diagnose high-level audio-visual failures. Experimental results show that commercial omni models such as Gemini substantially outperform other evaluators, yet even the strongest models continue to struggle with complex failures in our benchmark. These results demonstrate that MTAVG-Bench 2.0 provides a systematic benchmark for failure diagnosis in cinematic multi-talker audio-video generation.

顶级标签: multi-modal benchmark model evaluation
详细标签: audio-video generation multi-talker cinematic expressiveness failure diagnosis omni llms 或 搜索:

MTAVG-Bench 2.0:多说话人音视频生成中电影表现力的故障诊断基准 / MTAVG-Bench 2.0: Diagnosing Failure Modes of Cinematic Expressiveness in Multi-Talker Audio-Video Generation


1️⃣ 一句话总结

该论文提出了一个名为MTAVG-Bench 2.0的评估基准,专门用于诊断多角色音视频生成模型在表演、叙事、氛围和视听语言等电影级表现力上的常见缺陷,实验发现即使最先进的商用模型也难以应对其中的复杂故障。

源自 arXiv: 2605.28035