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Main Authors: Qiu, Linwei, Li, Gongzhe, Zhang, Xiaozhe, Sun, Qilin, Xie, Fengying
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2512.18718
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author Qiu, Linwei
Li, Gongzhe
Zhang, Xiaozhe
Sun, Qilin
Xie, Fengying
author_facet Qiu, Linwei
Li, Gongzhe
Zhang, Xiaozhe
Sun, Qilin
Xie, Fengying
contents Image correction and rectangling are valuable tasks in practical photography systems such as smartphones. Recent remarkable advancements in deep learning have undeniably brought about substantial performance improvements in these fields. Nevertheless, existing methods mainly rely on task-specific architectures. This significantly restricts their generalization ability and effective application across a wide range of different tasks. In this paper, we introduce the Unified Rectification Framework (UniRect), a comprehensive approach that addresses these practical tasks from a consistent distortion rectification perspective. Our approach incorporates various task-specific inverse problems into a general distortion model by simulating different types of lenses. To handle diverse distortions, UniRect adopts one task-agnostic rectification framework with a dual-component structure: a {Deformation Module}, which utilizes a novel Residual Progressive Thin-Plate Spline (RP-TPS) model to address complex geometric deformations, and a subsequent Restoration Module, which employs Residual Mamba Blocks (RMBs) to counteract the degradation caused by the deformation process and enhance the fidelity of the output image. Moreover, a Sparse Mixture-of-Experts (SMoEs) structure is designed to circumvent heavy task competition in multi-task learning due to varying distortions. Extensive experiments demonstrate that our models have achieved state-of-the-art performance compared with other up-to-date methods.
format Preprint
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publishDate 2025
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spellingShingle Rectification Reimagined: A Unified Mamba Model for Image Correction and Rectangling with Prompts
Qiu, Linwei
Li, Gongzhe
Zhang, Xiaozhe
Sun, Qilin
Xie, Fengying
Computer Vision and Pattern Recognition
Image correction and rectangling are valuable tasks in practical photography systems such as smartphones. Recent remarkable advancements in deep learning have undeniably brought about substantial performance improvements in these fields. Nevertheless, existing methods mainly rely on task-specific architectures. This significantly restricts their generalization ability and effective application across a wide range of different tasks. In this paper, we introduce the Unified Rectification Framework (UniRect), a comprehensive approach that addresses these practical tasks from a consistent distortion rectification perspective. Our approach incorporates various task-specific inverse problems into a general distortion model by simulating different types of lenses. To handle diverse distortions, UniRect adopts one task-agnostic rectification framework with a dual-component structure: a {Deformation Module}, which utilizes a novel Residual Progressive Thin-Plate Spline (RP-TPS) model to address complex geometric deformations, and a subsequent Restoration Module, which employs Residual Mamba Blocks (RMBs) to counteract the degradation caused by the deformation process and enhance the fidelity of the output image. Moreover, a Sparse Mixture-of-Experts (SMoEs) structure is designed to circumvent heavy task competition in multi-task learning due to varying distortions. Extensive experiments demonstrate that our models have achieved state-of-the-art performance compared with other up-to-date methods.
title Rectification Reimagined: A Unified Mamba Model for Image Correction and Rectangling with Prompts
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2512.18718