Sparkle: Realizing Lively Instruction-Guided Video Background Replacement via Decoupled Guidance

Ziyun Zeng, Yiqi Lin, Guoqiang Liang, Mike Zheng Shou

arXiv:2605.06535 · 2026-05-06 공개 · arXiv · PDF

Abstract

In recent years, open-source efforts like Senorita-2M have propelled video editing toward natural language instruction. However, current publicly available datasets predominantly focus on local editing or style transfer, which largely preserve the original scene structure and are easier to scale. In contrast, Background Replacement, a task central to creative applications such as film production and advertising, requires synthesizing entirely new, temporally consistent scenes while maintaining accurate foreground-background interactions, making large-scale data generation significantly more challenging. Consequently, this complex task remains largely underexplored due to a scarcity of high-quality training data. This gap is evident in poorly performing state-of-the-art models, e.g., Kiwi-Edit, because the primary open-source dataset that contains this task, i.e., OpenVE-3M, frequently produces static, unnatural backgrounds. In this paper, we trace this quality degradation to a lack of precise background guidance during data synthesis. Accordingly, we design a scalable pipeline that generates foreground and background guidance in a decoupled manner with strict quality filtering. Building on this pipeline, we introduce Sparkle, a dataset of ~140K video pairs spanning five common background-change themes, alongside Sparkle-Bench, the largest evaluation benchmark tailored for background replacement to date. Experiments demonstrate that our dataset and the model trained on it achieve substantially better performance than all existing baselines on both OpenVE-Bench and Sparkle-Bench. Our proposed dataset, benchmark, and model are fully open-sourced at https://showlab.github.io/Sparkle/.

한국어 요약

📋 한 줄 요약

**[비디오 편집/생성]** 자연어 지시 기반 비디오 배경 교체를 위한 decoupled guidance 데이터 파이프라인 Sparkle과 ~140K 영상 쌍 데이터셋·벤치마크 공개.

🎯 핵심 기여도

💡 핵심 아이디어

기존 OpenVE-3M 등 데이터셋은 정적·부자연스러운 배경을 만들어내, Kiwi-Edit 같은 SOTA 모델도 background replacement에서 성능이 떨어진다. 원인은 데이터 합성 단계에서 배경 가이드의 부재이며, foreground와 background를 분리해 가이드하면 시간적 일관성과 상호작용이 향상된다.

🔬 기술적 접근법

📊 주요 결과

💭 의의 및 한계

**의의**: 영화 제작·광고 등 창작 산업에 핵심인 background replacement 작업의 엔트리 장벽을 낮춤. **한계**: 5개 테마에 한정되며, 매우 복잡한 foreground-background 상호작용은 추가 연구 필요.

🚀 실용적 활용