DS1 spectrogram: FlowSlider: Training-Free Continuous Image Editing via Fidelity-Steering Decomposition

FlowSlider: Training-Free Continuous Image Editing via Fidelity-Steering Decomposition

April 2, 20262604.02088

Authors

Taichi Endo,Guoqing Hao,Kazuhiko Sumi

Abstract

Continuous image editing aims to provide slider-style control of edit strength while preserving source-image fidelity and maintaining a consistent edit direction. Existing learning-based slider methods typically rely on auxiliary modules trained with synthetic or proxy supervision.

This introduces additional training overhead and couples slider behavior to the training distribution, which can reduce reliability under distribution shifts in edits or domains. We propose FlowSlider, a training-free method for continuous editing in Rectified Flow that requires no post-training. FlowSlider decomposes FlowEdit's update into (i) a fidelity term, which acts as a source-conditioned stabilizer that preserves identity and structure, and (ii) a steering term that drives semantic transition toward the target edit. Geometric analysis and empirical measurements show that these terms are approximately orthogonal, enabling stable strength control by scaling only the steering term while keeping the fidelity term unchanged.

As a result, FlowSlider provides smooth and reliable control without post-training, improving continuous editing quality across diverse tasks.

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