FREE-Edit: Using Editing-aware Injection in Rectified Flow Models for Zero-shot Image-Driven Video Editing
Maomao Li, Yunfei Liu, Yu Li

TL;DR
This paper introduces FREE-Edit, a zero-shot video editing framework that uses an editing-aware injection method to modulate feature injection intensity, improving the quality of image-driven video edits without fine-tuning.
Contribution
The paper proposes a novel editing-aware injection technique and integrates it into a zero-shot video editing framework using rectified flow models, eliminating the need for training or fine-tuning.
Findings
Effective in various editing scenarios
Produces higher-quality video edits
No fine-tuning required
Abstract
Image-driven video editing aims to propagate edit contents from the modified first frame to the remaining frames. Existing methods usually invert the source video to noise using a pre-trained image-to-video (I2V) model and then guide the sampling process using the edited first frame. Generally, a popular choice for maintaining motion and layout from the source video is intervening in the denoising process by injecting attention during reconstruction. However, such injection often leads to unsatisfactory results, where excessive injection leads to conflicting semantics with the source video while insufficient injection brings limited source representation. Recognizing this, we propose an Editing-awaRE (REE) injection method to modulate the injection intensity of each token. Specifically, we first compute the pixel difference between the source and edited first frame to form a…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Video Analysis and Summarization · Video Coding and Compression Technologies
