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Main Authors: Yang, Jinrui, Liu, Qing, Li, Yijun, Ren, Mengwei, Zhang, Letian, Lin, Zhe, Xie, Cihang, Zhou, Yuyin
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.15507
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author Yang, Jinrui
Liu, Qing
Li, Yijun
Ren, Mengwei
Zhang, Letian
Lin, Zhe
Xie, Cihang
Zhou, Yuyin
author_facet Yang, Jinrui
Liu, Qing
Li, Yijun
Ren, Mengwei
Zhang, Letian
Lin, Zhe
Xie, Cihang
Zhou, Yuyin
contents Recent image generation models produce impressive composites, but often fail to preserve the identity of user-provided content when editing specific elements: the surrounding scene may shift, and even the edited object's appearance can drift from the original. Layered representation offer a natural remedy--they allow users to independently manipulate individual elements--but existing layered methods typically produce transparent foregrounds without realistic visual effects such as shadows and reflections, forcing the use of a second harmonization model after every edit, which in turn introduces drift. To overcome these limitations, we present LASAGNA, which generates a photorealistic background (BG) and an RGBA foreground with compelling visual effects in a single forward pass. By treating object-associated visual effects as part of the foreground (FG) layer, LASAGNA supports the dominant class of consumer edits (e.g., translation, scaling, recoloring, duplication) via alpha compositing alone, without invoking any model post-edit, thereby eliminating identity drift introduced by cascade editing pipelines. This single-pass design contrasts with prior layered methods that rely on separate expert models for each task. LASAGNA handles diverse conditional inputs--text prompts, FG, BG, and location masks--within a unified architecture. We further release two community resources: LASAGNA-48K, the first public dataset of 48K layered image triplets with photorealistic visual effects, and LASAGNA-BENCH, the first standardized benchmark for layer-centric generation and editing, comprising 242 expert-annotated samples across six diverse sources. Experiments show that LASAGNA outperforms both general-purpose editors and prior layered methods across three generation modes, and supports a wide range of post-edits without any model re-inference.
format Preprint
id arxiv_https___arxiv_org_abs_2601_15507
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle A Unified and Controllable Framework for Layered Image Generation with Visual Effects
Yang, Jinrui
Liu, Qing
Li, Yijun
Ren, Mengwei
Zhang, Letian
Lin, Zhe
Xie, Cihang
Zhou, Yuyin
Computer Vision and Pattern Recognition
Recent image generation models produce impressive composites, but often fail to preserve the identity of user-provided content when editing specific elements: the surrounding scene may shift, and even the edited object's appearance can drift from the original. Layered representation offer a natural remedy--they allow users to independently manipulate individual elements--but existing layered methods typically produce transparent foregrounds without realistic visual effects such as shadows and reflections, forcing the use of a second harmonization model after every edit, which in turn introduces drift. To overcome these limitations, we present LASAGNA, which generates a photorealistic background (BG) and an RGBA foreground with compelling visual effects in a single forward pass. By treating object-associated visual effects as part of the foreground (FG) layer, LASAGNA supports the dominant class of consumer edits (e.g., translation, scaling, recoloring, duplication) via alpha compositing alone, without invoking any model post-edit, thereby eliminating identity drift introduced by cascade editing pipelines. This single-pass design contrasts with prior layered methods that rely on separate expert models for each task. LASAGNA handles diverse conditional inputs--text prompts, FG, BG, and location masks--within a unified architecture. We further release two community resources: LASAGNA-48K, the first public dataset of 48K layered image triplets with photorealistic visual effects, and LASAGNA-BENCH, the first standardized benchmark for layer-centric generation and editing, comprising 242 expert-annotated samples across six diverse sources. Experiments show that LASAGNA outperforms both general-purpose editors and prior layered methods across three generation modes, and supports a wide range of post-edits without any model re-inference.
title A Unified and Controllable Framework for Layered Image Generation with Visual Effects
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2601.15507