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Main Authors: Li, Jiusi, Jiang, Jackson, Miao, Jinyu, Long, Miao, Wen, Tuopu, Jia, Peijin, Liu, Shengxiang, Yu, Chunlei, Liu, Maolin, Cai, Yuzhan, Jiang, Kun, Yang, Mengmeng, Yang, Diange
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2508.20471
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author Li, Jiusi
Jiang, Jackson
Miao, Jinyu
Long, Miao
Wen, Tuopu
Jia, Peijin
Liu, Shengxiang
Yu, Chunlei
Liu, Maolin
Cai, Yuzhan
Jiang, Kun
Yang, Mengmeng
Yang, Diange
author_facet Li, Jiusi
Jiang, Jackson
Miao, Jinyu
Long, Miao
Wen, Tuopu
Jia, Peijin
Liu, Shengxiang
Yu, Chunlei
Liu, Maolin
Cai, Yuzhan
Jiang, Kun
Yang, Mengmeng
Yang, Diange
contents Corner cases are crucial for training and validating autonomous driving systems, yet collecting them from the real world is often costly and hazardous. Editing objects within captured sensor data offers an effective alternative for generating diverse scenarios, commonly achieved through 3D Gaussian Splatting or image generative models. However, these approaches often suffer from limited visual fidelity or imprecise pose control. To address these issues, we propose G^2Editor, a framework designed for photorealistic and precise object editing in driving videos. Our method leverages a 3D Gaussian representation of the edited object as a dense prior, injected into the denoising process to ensure accurate pose control and spatial consistency. A scene-level 3D bounding box layout is employed to reconstruct occluded areas of non-target objects. Furthermore, to guide the appearance details of the edited object, we incorporate hierarchical fine-grained features as additional conditions during generation. Experiments on the Waymo Open Dataset demonstrate that G^2Editor effectively supports object repositioning, insertion, and deletion within a unified framework, outperforming existing methods in both pose controllability and visual quality, while also benefiting downstream data-driven tasks.
format Preprint
id arxiv_https___arxiv_org_abs_2508_20471
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Realistic and Controllable 3D Gaussian-Guided Object Editing for Driving Video Generation
Li, Jiusi
Jiang, Jackson
Miao, Jinyu
Long, Miao
Wen, Tuopu
Jia, Peijin
Liu, Shengxiang
Yu, Chunlei
Liu, Maolin
Cai, Yuzhan
Jiang, Kun
Yang, Mengmeng
Yang, Diange
Computer Vision and Pattern Recognition
Corner cases are crucial for training and validating autonomous driving systems, yet collecting them from the real world is often costly and hazardous. Editing objects within captured sensor data offers an effective alternative for generating diverse scenarios, commonly achieved through 3D Gaussian Splatting or image generative models. However, these approaches often suffer from limited visual fidelity or imprecise pose control. To address these issues, we propose G^2Editor, a framework designed for photorealistic and precise object editing in driving videos. Our method leverages a 3D Gaussian representation of the edited object as a dense prior, injected into the denoising process to ensure accurate pose control and spatial consistency. A scene-level 3D bounding box layout is employed to reconstruct occluded areas of non-target objects. Furthermore, to guide the appearance details of the edited object, we incorporate hierarchical fine-grained features as additional conditions during generation. Experiments on the Waymo Open Dataset demonstrate that G^2Editor effectively supports object repositioning, insertion, and deletion within a unified framework, outperforming existing methods in both pose controllability and visual quality, while also benefiting downstream data-driven tasks.
title Realistic and Controllable 3D Gaussian-Guided Object Editing for Driving Video Generation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2508.20471