ArXiv TLDR

IR-Flow: Bridging Discriminative and Generative Image Restoration via Rectified Flow

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2604.19680

Zihao Fan, Xin Lu, Jie Xiao, Dong Li, Jie Huang + 1 more

cs.CV

TLDR

IR-Flow unifies discriminative and generative image restoration using Rectified Flow for efficient, high-quality results across various degradations.

Key contributions

  • Constructs multilevel data distribution flows to adapt to diverse degradation levels.
  • Proposes cumulative velocity fields to guide intermediate states toward clean image targets.
  • Introduces a multi-step consistency constraint for coherent trajectories and few-step performance.
  • Enables fast inference and improves adaptability to out-of-distribution degradations.

Why it matters

This paper addresses the trade-off between detail in discriminative methods and efficiency in generative methods for image restoration. IR-Flow offers a unified, efficient framework that achieves excellent distortion-perception balance with fast inference. It significantly improves adaptability to various image degradations.

Original Abstract

In image restoration, single-step discriminative mappings often lack fine details via expectation learning, whereas generative paradigms suffer from inefficient multi-step sampling and noise-residual coupling. To address this dilemma, we propose IR-Flow, a novel image restoration method based on Rectified Flow that serves as a unified framework bridging the gap between discriminative and generative paradigms. Specifically, we first construct multilevel data distribution flows, which expand the ability of models to learn from and adapt to various levels of degradation. Subsequently, cumulative velocity fields are proposed to learn transport trajectories across varying degradation levels, guiding intermediate states toward the clean target, while a multi-step consistency constraint is presented to enforce trajectory coherence and boost few-step restoration performance. We show that directly establishing a linear transport flow between degraded and clean image domains not only enables fast inference but also improves adaptability to out-of-distribution degradations. Extensive evaluations on deraining, denoising and raindrop removal tasks demonstrate that IR-Flow achieves competitive quantitative results with only a few sampling steps, offering an efficient and flexible framework that maintains an excellent distortion-perception balance. Our code is available at https://github.com/fanzh03/IR-Flow.

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