MetaMorph: Multimodal Understanding and Generation via Instruction Tuning
Abstract
In this work, we propose Visual-Predictive Instruction Tuning (VPiT) - a simple and effective extension to visual instruction tuning that enables a pretrained LLM to quickly morph into an unified autoregressive model capable of generating both text and visual tokens. VPiT teaches an LLM to predict discrete text tokens and continuous visual tokens from any input sequence of image and text data curated in an instruction-following format. Our empirical investigation reveals several intriguing properties of VPiT: (1) visual generation ability emerges as a natural byproduct of improved visual understanding, and can be unlocked efficiently with a small amount of generation data; (2) while we find understanding and generation to be mutually beneficial, understanding data contributes to both capabilities more effectively than generation data. Building upon these findings, we train our MetaMorph model and achieve competitive performance on both visual understanding and generation. In visual generation, MetaMorph can leverage the world knowledge and reasoning abilities gained from LLM pretraining, and overcome common failure modes exhibited by other generation models. Our results suggest that LLMs may have strong "prior" vision capabilities that can be efficiently adapted to both visual understanding and generation with a relatively simple instruction tuning process.
Cite
Text
Tong et al. "MetaMorph: Multimodal Understanding and Generation via Instruction Tuning." International Conference on Computer Vision, 2025.Markdown
[Tong et al. "MetaMorph: Multimodal Understanding and Generation via Instruction Tuning." International Conference on Computer Vision, 2025.](https://mlanthology.org/iccv/2025/tong2025iccv-metamorph/)BibTeX
@inproceedings{tong2025iccv-metamorph,
title = {{MetaMorph: Multimodal Understanding and Generation via Instruction Tuning}},
author = {Tong, Shengbang and Fan, David and Li, Jiachen and Xiong, Yunyang and Chen, Xinlei and Sinha, Koustuv and Rabbat, Michael and LeCun, Yann and Xie, Saining and Liu, Zhuang},
booktitle = {International Conference on Computer Vision},
year = {2025},
pages = {17001-17012},
url = {https://mlanthology.org/iccv/2025/tong2025iccv-metamorph/}
}