ROSE: Remove Objects with Side Effects in Videos
Chenxuan Miao, Yutong Feng, Jianshu Zeng, Zixiang Gao, Hantang Liu, Yunfeng Yan, Donglian Qi, Xi Chen, Bin Wang, Hengshuang Zhao

TL;DR
ROSE introduces a novel framework for removing objects and their side effects in videos, utilizing synthetic data generation and diffusion transformer models to improve performance and generalization in complex scenarios.
Contribution
The paper presents a fully-automatic pipeline for synthetic data creation and a diffusion transformer-based model for effective side effect removal in videos.
Findings
ROSE outperforms existing video object erasing methods.
The synthetic dataset enables robust training for diverse scenarios.
ROSE generalizes well to real-world videos.
Abstract
Video object removal has achieved advanced performance due to the recent success of video generative models. However, when addressing the side effects of objects, e.g., their shadows and reflections, existing works struggle to eliminate these effects for the scarcity of paired video data as supervision. This paper presents ROSE, termed Remove Objects with Side Effects, a framework that systematically studies the object's effects on environment, which can be categorized into five common cases: shadows, reflections, light, translucency and mirror. Given the challenges of curating paired videos exhibiting the aforementioned effects, we leverage a 3D rendering engine for synthetic data generation. We carefully construct a fully-automatic pipeline for data preparation, which simulates a large-scale paired dataset with diverse scenes, objects, shooting angles, and camera trajectories. ROSE is…
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