CVAIMay 18

Semantic Generative Tuning for Unified Multimodal Models

arXiv:2605.1871497.3Has Code
Predicted impact top 3% in CV · last 90 daysOriginality Highly original
AI Analysis

For researchers building unified multimodal models, SGT provides a systematic post-training method to bridge the gap between visual understanding and generation, achieving mutual reinforcement.

This work introduces Semantic Generative Tuning (SGT), a novel paradigm that uses image segmentation as a generative proxy to align visual understanding and generation in unified multimodal models, consistently improving both comprehension and generative fidelity across benchmarks.

Unified multimodal models (UMMs) strive to consolidate visual understanding and visual generation within a single architecture. However, prevailing training paradigms independently optimize understanding via sparse text signals and generation through dense pixel objectives. Such a decoupled strategy yields misaligned representation spaces, isolating visual understanding from generation and hindering their mutual reinforcement. This work presents the first systematic investigation into generative post-training, where we formulate hierarchical visual tasks as generative proxies to bridge the isolation in UMMs. Our empirical investigation reveals that high-level semantic tasks, particularly image segmentation, serve as optimal proxies. Unlike low-level tasks that distract models with texture details, segmentation provides structural semantics that significantly enhance both vision-centric perception and generative layout fidelity. Building upon these insights, we introduce Semantic Generative Tuning (SGT), a novel paradigm that leverages segmentation as a generative proxy to align and synergize multimodal capabilities. Mechanistic analyses further demonstrate that SGT fundamentally improves feature linear separability and optimizes visual-textual attention allocation pattern. Extensive evaluations show that SGT consistently improves both multimodal comprehension and generative fidelity across mainstream benchmarks. Our code is available on the https://song2yu.github.io/SGT/.

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