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Bibliographic Details
Main Authors: Pan, Xinyue, Chen, Yuhao, Zhu, Fengqing
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.17666
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author Pan, Xinyue
Chen, Yuhao
Zhu, Fengqing
author_facet Pan, Xinyue
Chen, Yuhao
Zhu, Fengqing
contents Real-world meal images often contain multiple food items, making reliable compositional food image generation important for applications such as image-based dietary assessment, where multi-food data augmentation is needed, and recipe visualization. However, modern text-to-image diffusion models struggle to generate accurate multi-food images due to object entanglement, where adjacent foods (e.g., rice and soup) fuse together because many foods do not have clear boundaries. To address this challenge, we introduce Prompt Grafting (PG), a training-free framework that combines explicit spatial cues in text with implicit layout guidance during sampling. PG runs a two-stage process where a layout prompt first establishes distinct regions and the target prompt is grafted once layout formation stabilizes. The framework enables food entanglement control: users can specify which food items should remain separated or be intentionally mixed by editing the arrangement of layouts. Across two food datasets, our method significantly improves the presence of target objects and provides qualitative evidence of controllable separation.
format Preprint
id arxiv_https___arxiv_org_abs_2601_17666
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Training-Free Text-to-Image Compositional Food Generation via Prompt Grafting
Pan, Xinyue
Chen, Yuhao
Zhu, Fengqing
Computer Vision and Pattern Recognition
Real-world meal images often contain multiple food items, making reliable compositional food image generation important for applications such as image-based dietary assessment, where multi-food data augmentation is needed, and recipe visualization. However, modern text-to-image diffusion models struggle to generate accurate multi-food images due to object entanglement, where adjacent foods (e.g., rice and soup) fuse together because many foods do not have clear boundaries. To address this challenge, we introduce Prompt Grafting (PG), a training-free framework that combines explicit spatial cues in text with implicit layout guidance during sampling. PG runs a two-stage process where a layout prompt first establishes distinct regions and the target prompt is grafted once layout formation stabilizes. The framework enables food entanglement control: users can specify which food items should remain separated or be intentionally mixed by editing the arrangement of layouts. Across two food datasets, our method significantly improves the presence of target objects and provides qualitative evidence of controllable separation.
title Training-Free Text-to-Image Compositional Food Generation via Prompt Grafting
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2601.17666