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Main Authors: Dai, Yasong, Hayder, Zeeshan, Ahmedt-Aristizabal, David, Li, Hongdong
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.24942
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author Dai, Yasong
Hayder, Zeeshan
Ahmedt-Aristizabal, David
Li, Hongdong
author_facet Dai, Yasong
Hayder, Zeeshan
Ahmedt-Aristizabal, David
Li, Hongdong
contents Recent diffusion and flow matching models have demonstrated strong capabilities in image generation and editing by progressively removing noise through iterative sampling. While this enables flexible inversion for semantic-preserving edits, few-step sampling regimes suffer from poor forward process approximation, leading to degraded editing quality. Existing few-step inversion methods often rely on pretrained generators and auxiliary modules, limiting scalability and generalization across different architectures. To address these limitations, we propose BiFM (Bidirectional Flow Matching), a unified framework that jointly learns generation and inversion within a single model. BiFM directly estimates average velocity fields in both ``image $\to$ noise" and ``noise $\to$ image" directions, constrained by a shared instantaneous velocity field derived from either predefined schedules or pretrained multi-step diffusion models. Additionally, BiFM introduces a novel training strategy using continuous time-interval supervision, stabilized by a bidirectional consistency objective and a lightweight time-interval embedding. This bidirectional formulation also enables one-step inversion and can integrate seamlessly into popular diffusion and flow matching backbones. Across diverse image editing and generation tasks, BiFM consistently outperforms existing few-step approaches, achieving superior performance and editability.
format Preprint
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publishDate 2026
record_format arxiv
spellingShingle BiFM: Bidirectional Flow Matching for Few-Step Image Editing and Generation
Dai, Yasong
Hayder, Zeeshan
Ahmedt-Aristizabal, David
Li, Hongdong
Computer Vision and Pattern Recognition
Recent diffusion and flow matching models have demonstrated strong capabilities in image generation and editing by progressively removing noise through iterative sampling. While this enables flexible inversion for semantic-preserving edits, few-step sampling regimes suffer from poor forward process approximation, leading to degraded editing quality. Existing few-step inversion methods often rely on pretrained generators and auxiliary modules, limiting scalability and generalization across different architectures. To address these limitations, we propose BiFM (Bidirectional Flow Matching), a unified framework that jointly learns generation and inversion within a single model. BiFM directly estimates average velocity fields in both ``image $\to$ noise" and ``noise $\to$ image" directions, constrained by a shared instantaneous velocity field derived from either predefined schedules or pretrained multi-step diffusion models. Additionally, BiFM introduces a novel training strategy using continuous time-interval supervision, stabilized by a bidirectional consistency objective and a lightweight time-interval embedding. This bidirectional formulation also enables one-step inversion and can integrate seamlessly into popular diffusion and flow matching backbones. Across diverse image editing and generation tasks, BiFM consistently outperforms existing few-step approaches, achieving superior performance and editability.
title BiFM: Bidirectional Flow Matching for Few-Step Image Editing and Generation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2603.24942