CVFeb 27

Can Unified Generation and Understanding Models Maintain Semantic Equivalence Across Different Output Modalities?

Hongbo Jiang, Jie Li, Yunhang Shen, Pingyang Dai, Xing Sun, Haoyu Cao, Liujuan Cao
arXiv:2602.23711v11 citations
Originality Incremental advance
AI Analysis

This addresses a critical gap in evaluating U-MLLMs for researchers and developers, highlighting a breakdown in cross-modal alignment that could impact applications requiring consistent multimodal outputs.

The paper investigates whether unified multimodal large language models (U-MLLMs) maintain semantic equivalence across output modalities, finding that while they perform well in textual reasoning, they fail to do so when generating visual answers, with a significant performance collapse observed.

Unified Multimodal Large Language Models (U-MLLMs) integrate understanding and generation within a single architecture. However, existing evaluations typically assess these capabilities separately, overlooking semantic equivalence, i.e., the ability to manifest consistent reasoning results regardless of the output modality. In this work, we investigate whether current U-MLLMs satisfy this premise. We observe that while models demonstrate robust textual reasoning, they fail to maintain semantic equivalence when required to render the same results in the image modality. To rigorously diagnose this discrepancy, we introduce VGUBench, a framework to decouple reasoning logic from generation fidelity. VGUBench comprises three diagnostic tasks: (1)Textual Generative Understanding, establishing a baseline for reasoning accuracy in textual response; (2)Visual Generative Understanding, evaluating the ability to generate visual responses that represent the correct answer; and (3)a Visual Rendering control task, which assesses the ability to directly render explicit visual descriptions into images without complex reasoning. Our evaluation reveals a significant disparity: despite strong performance in textual understanding and visual rendering, U-MLLMs exhibit a marked performance collapse when required to generate visual answers to questions. Furthermore, we find a negligible correlation between visual answering performance and basic rendering quality. These results suggest that the failure stems not from insufficient generation fidelity, but from a breakdown in cross-modal semantic alignment. We provide diagnostic insights to address this challenge in future Unified Generation and Understanding Models.

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