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Reconstruction Alignment Improves Unified Multimodal Models
Episode 1126

Reconstruction Alignment Improves Unified Multimodal Models

Daily Paper Cast

September 11, 202524m 13s

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Show Notes

🤗 Upvotes: 31 | cs.CV, cs.AI, cs.LG

Authors:
Ji Xie, Trevor Darrell, Luke Zettlemoyer, XuDong Wang

Title:
Reconstruction Alignment Improves Unified Multimodal Models

Arxiv:
http://arxiv.org/abs/2509.07295v1

Abstract:
Unified multimodal models (UMMs) unify visual understanding and generation within a single architecture. However, conventional training relies on image-text pairs (or sequences) whose captions are typically sparse and miss fine-grained visual details--even when they use hundreds of words to describe a simple image. We introduce Reconstruction Alignment (RecA), a resource-efficient post-training method that leverages visual understanding encoder embeddings as dense "text prompts," providing rich supervision without captions. Concretely, RecA conditions a UMM on its own visual understanding embeddings and optimizes it to reconstruct the input image with a self-supervised reconstruction loss, thereby realigning understanding and generation. Despite its simplicity, RecA is broadly applicable: across autoregressive, masked-autoregressive, and diffusion-based UMMs, it consistently improves generation and editing fidelity. With only 27 GPU-hours, post-training with RecA substantially improves image generation performance on GenEval (0.73$\rightarrow$0.90) and DPGBench (80.93$\rightarrow$88.15), while also boosting editing benchmarks (ImgEdit 3.38$\rightarrow$3.75, GEdit 6.94$\rightarrow$7.25). Notably, RecA surpasses much larger open-source models and applies broadly across diverse UMM architectures, establishing it as an efficient and general post-training alignment strategy for UMMs