Interleave-VLA: Enhancing Robot Manipulation with Image-Text Interleaved Instructions
Abstract
The rise of foundation models paves the way for generalist robot policies in the physical world. Existing methods relying on text-only instructions often struggle to generalize to unseen scenarios. We argue that interleaved image-text inputs offer richer and less biased context and enable robots to better handle unseen tasks with more versatile human-robot interaction. Building on this insight, we introduce Interleave-VLA, a robot learning paradigm extending interleaved image-text instructions from digital world to directly generating continuous action sequences in the physical world. Interleave-VLA offers a natural, flexible, and model-agnostic paradigm that extends state-of-the-art vision-language-action (VLA) models with minimal modifications while achieving strong zero-shot generalization. Interleave-VLA also includes an automatic pipeline that converts text instructions from Open X-Embodiment into interleaved image-text instructions, resulting in a large-scale real-world interleaved embodied dataset with 210k episodes. Comprehensive evaluation in simulation and the real world shows that Interleave-VLA offers two major benefits: (1) improves out-of-domain generalization to unseen objects by 2× compared to text input baselines, (2) supports flexible task interfaces and diverse instructions in a zero-shot manner, such as hand-drawn sketches. We attribute Interleave-VLA's strong zero-shot capability to the use of instruction images, which effectively mitigate hallucinations, and the inclusion of heterogeneous multimodal datasets, enriched with Internet-sourced images, offering potential for scalability. [Our project site](https://interleave-vla.github.io/Interleave-VLA-Anonymous/) has more information.
Cite
Text
Fan et al. "Interleave-VLA: Enhancing Robot Manipulation with Image-Text Interleaved Instructions." International Conference on Learning Representations, 2026.Markdown
[Fan et al. "Interleave-VLA: Enhancing Robot Manipulation with Image-Text Interleaved Instructions." International Conference on Learning Representations, 2026.](https://mlanthology.org/iclr/2026/fan2026iclr-interleavevla/)BibTeX
@inproceedings{fan2026iclr-interleavevla,
title = {{Interleave-VLA: Enhancing Robot Manipulation with Image-Text Interleaved Instructions}},
author = {Fan, Cunxin and Jia, Xiaosong and Sun, Yihang and Wang, Yixiao and Wei, Jianglan and Gong, Ziyang and Zhao, Xiangyu and Tomizuka, Masayoshi and Yang, Xue and Yan, Junchi and Ding, Mingyu},
booktitle = {International Conference on Learning Representations},
year = {2026},
url = {https://mlanthology.org/iclr/2026/fan2026iclr-interleavevla/}
}