Best of Both Worlds: Multimodal Reasoning and Generation via Unified Discrete Flow Matching
Abstract
UniDFlow is a unified discrete flow-matching framework that decouples understanding and generation through low-rank adapters and uses reference-based alignment to improve multimodal tasks without retraining.
We propose UniDFlow, a unified discrete flow-matching framework for multimodal understanding, generation, and editing. It decouples understanding and generation via task-specific low-rank adapters, avoiding objective interference and representation entanglement, while a novel reference-based multimodal preference alignment optimizes relative outcomes under identical conditioning, improving faithfulness and controllability without large-scale retraining. UniDFlpw achieves SOTA performance across eight benchmarks and exhibits strong zero-shot generalization to tasks including inpainting, in-context image generation, reference-based editing, and compositional generation, despite no explicit task-specific training.
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