-
[pdf]
[supp]
[bibtex]@InProceedings{Shi_2026_CVPR, author = {Shi, Min and Zeng, Xiaohui and Huang, Jiannan and Cui, Yin and Ferroni, Francesco and Li, Jialuo and Li, Zhaoshuo and Balaji, Yogesh and Wang, Haoxiang and Lin, Tsung-Yi and Fu, Xiao and Zhao, Yue and Chen, Chieh-Yun and Liu, Ming-Yu and Shi, Humphrey}, title = {DuoGen: Towards Autonomous Interleaved Multimodal Generation}, booktitle = {Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)}, month = {June}, year = {2026}, pages = {21901-21911} }
DuoGen: Towards Autonomous Interleaved Multimodal Generation
Abstract
Interleaved multimodal generation enables capabilities beyond unimodal generation models, such as step-by-step instructional guides, visual planning, and generating visual drafts for reasoning. However, the quality of existing interleaved generation models under general instructions remains limited by insufficient training data and base model capacity. We present DuoGen, an interleaved generation framework that systematically addresses data curation, architecture design, and evaluation. On the data side, we build a large-scale, high-quality instruction-tuning dataset by combining multimodal conversations rewritten from curated raw websites, and diverse synthetic examples covering everyday scenarios. Architecturally, DuoGen leverages the strong visual understanding of a pretrained multimodal LLM and the visual generation capabilities of a diffusion transformer (DiT) pretrained on video generation, avoiding costly unimodal pretraining and enabling flexible base model selection. A two-stage decoupled strategy first instruction-tunes the MLLM, then aligns DiT with it using curated interleaved image-text sequences. Across public and newly proposed benchmarks, DuoGen outperforms prior open-source models in text quality, image fidelity, and image-context alignment, and also achieves state-of-the-art performance on text-to-image and image editing among unified generation models. Data and code are released at https://research.nvidia.com/labs/dir/duogen/
Related Material

