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Scaling Instruction-Based Video Editing with a High-Quality Synthetic Dataset

About

Instruction-based video editing promises to democratize content creation, yet its progress is severely hampered by the scarcity of large-scale, high-quality training data. We introduce Ditto, a holistic framework designed to tackle this fundamental challenge. At its heart, Ditto features a novel data generation pipeline that fuses the creative diversity of a leading image editor with an in-context video generator, overcoming the limited scope of existing models. To make this process viable, our framework resolves the prohibitive cost-quality trade-off by employing an efficient, distilled model architecture augmented by a temporal enhancer, which simultaneously reduces computational overhead and improves temporal coherence. Finally, to achieve full scalability, this entire pipeline is driven by an intelligent agent that crafts diverse instructions and rigorously filters the output, ensuring quality control at scale. Using this framework, we invested over 12,000 GPU-days to build Ditto-1M, a new dataset of one million high-fidelity video editing examples. We trained our model, Editto, on Ditto-1M with a curriculum learning strategy. The results demonstrate superior instruction-following ability and establish a new state-of-the-art in instruction-based video editing.

Qingyan Bai, Qiuyu Wang, Hao Ouyang, Yue Yu, Hanlin Wang, Wen Wang, Ka Leong Cheng, Shuailei Ma, Yanhong Zeng, Zichen Liu, Yinghao Xu, Yujun Shen, Qifeng Chen• 2025

Related benchmarks

TaskDatasetResultRank
Generation QualityPointBench
Success Rate (%)35.56
18
Video EditingOpenVE-Bench (test)
Overall Score3.44
16
Instruction-Guided Video EditingOpenVE-Bench 1.0 (full)
Overall Quality2.06
16
Video EditingDAVIS (first 33 frames)
Background MSE1.88e+3
14
Video Object RetexturingPexels video dataset (test)
Background MSE2.10e+3
14
Point-based video object insertionDAVIS (test)
Acc Pos22.07
9
Mask-based video object insertionInternal (test)
MSE7.88e+3
9
Instruction-Guided Video EditingOpenVE-Bench
Overall Score1.98
8
Video Editing EvaluationOpenVE-Bench Video Paris 1.0
Overall Score3.3
8
Video EditingOpenVE-Bench 1.0 (test)
Overall Score3.44
8
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