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Main Authors: Gabeur, Valentin, Long, Shangbang, Peng, Songyou, Voigtlaender, Paul, Sun, Shuyang, Bao, Yanan, Truong, Karen, Wang, Zhicheng, Zhou, Wenlei, Barron, Jonathan T., Genova, Kyle, Kannen, Nithish, Ben, Sherry, Li, Yandong, Guo, Mandy, Yogin, Suhas, Gu, Yiming, Chen, Huizhong, Wang, Oliver, Xie, Saining, Zhou, Howard, He, Kaiming, Funkhouser, Thomas, Alayrac, Jean-Baptiste, Soricut, Radu
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.20329
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author Gabeur, Valentin
Long, Shangbang
Peng, Songyou
Voigtlaender, Paul
Sun, Shuyang
Bao, Yanan
Truong, Karen
Wang, Zhicheng
Zhou, Wenlei
Barron, Jonathan T.
Genova, Kyle
Kannen, Nithish
Ben, Sherry
Li, Yandong
Guo, Mandy
Yogin, Suhas
Gu, Yiming
Chen, Huizhong
Wang, Oliver
Xie, Saining
Zhou, Howard
He, Kaiming
Funkhouser, Thomas
Alayrac, Jean-Baptiste
Soricut, Radu
author_facet Gabeur, Valentin
Long, Shangbang
Peng, Songyou
Voigtlaender, Paul
Sun, Shuyang
Bao, Yanan
Truong, Karen
Wang, Zhicheng
Zhou, Wenlei
Barron, Jonathan T.
Genova, Kyle
Kannen, Nithish
Ben, Sherry
Li, Yandong
Guo, Mandy
Yogin, Suhas
Gu, Yiming
Chen, Huizhong
Wang, Oliver
Xie, Saining
Zhou, Howard
He, Kaiming
Funkhouser, Thomas
Alayrac, Jean-Baptiste
Soricut, Radu
contents Recent works show that image and video generators exhibit zero-shot visual understanding behaviors, in a way reminiscent of how LLMs develop emergent capabilities of language understanding and reasoning from generative pretraining. While it has long been conjectured that the ability to create visual content implies an ability to understand it, there has been limited evidence that generative vision models have developed strong understanding capabilities. In this work, we demonstrate that image generation training serves a role similar to LLM pretraining, and lets models learn powerful and general visual representations that enable SOTA performance on various vision tasks. We introduce Vision Banana, a generalist model built by instruction-tuning Nano Banana Pro (NBP) on a mixture of its original training data alongside a small amount of vision task data. By parameterizing the output space of vision tasks as RGB images, we seamlessly reframe perception as image generation. Our generalist model, Vision Banana, achieves SOTA results on a variety of vision tasks involving both 2D and 3D understanding, beating or rivaling zero-shot domain-specialists, including Segment Anything Model 3 on segmentation tasks, and the Depth Anything series on metric depth estimation. We show that these results can be achieved with lightweight instruction-tuning without sacrificing the base model's image generation capabilities. The superior results suggest that image generation pretraining is a generalist vision learner. It also shows that image generation serves as a unified and universal interface for vision tasks, similar to text generation's role in language understanding and reasoning. We could be witnessing a major paradigm shift for computer vision, where generative vision pretraining takes a central role in building Foundational Vision Models for both generation and understanding.
format Preprint
id arxiv_https___arxiv_org_abs_2604_20329
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Image Generators are Generalist Vision Learners
Gabeur, Valentin
Long, Shangbang
Peng, Songyou
Voigtlaender, Paul
Sun, Shuyang
Bao, Yanan
Truong, Karen
Wang, Zhicheng
Zhou, Wenlei
Barron, Jonathan T.
Genova, Kyle
Kannen, Nithish
Ben, Sherry
Li, Yandong
Guo, Mandy
Yogin, Suhas
Gu, Yiming
Chen, Huizhong
Wang, Oliver
Xie, Saining
Zhou, Howard
He, Kaiming
Funkhouser, Thomas
Alayrac, Jean-Baptiste
Soricut, Radu
Computer Vision and Pattern Recognition
Artificial Intelligence
Recent works show that image and video generators exhibit zero-shot visual understanding behaviors, in a way reminiscent of how LLMs develop emergent capabilities of language understanding and reasoning from generative pretraining. While it has long been conjectured that the ability to create visual content implies an ability to understand it, there has been limited evidence that generative vision models have developed strong understanding capabilities. In this work, we demonstrate that image generation training serves a role similar to LLM pretraining, and lets models learn powerful and general visual representations that enable SOTA performance on various vision tasks. We introduce Vision Banana, a generalist model built by instruction-tuning Nano Banana Pro (NBP) on a mixture of its original training data alongside a small amount of vision task data. By parameterizing the output space of vision tasks as RGB images, we seamlessly reframe perception as image generation. Our generalist model, Vision Banana, achieves SOTA results on a variety of vision tasks involving both 2D and 3D understanding, beating or rivaling zero-shot domain-specialists, including Segment Anything Model 3 on segmentation tasks, and the Depth Anything series on metric depth estimation. We show that these results can be achieved with lightweight instruction-tuning without sacrificing the base model's image generation capabilities. The superior results suggest that image generation pretraining is a generalist vision learner. It also shows that image generation serves as a unified and universal interface for vision tasks, similar to text generation's role in language understanding and reasoning. We could be witnessing a major paradigm shift for computer vision, where generative vision pretraining takes a central role in building Foundational Vision Models for both generation and understanding.
title Image Generators are Generalist Vision Learners
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2604.20329