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从专用到智用:智能体在图像复原中的进展与挑战

孙伟雄 殷翔 肖宏明 顾津锦 董超

集成技术2026,Vol.15Issue(2):1-21,21.
集成技术2026,Vol.15Issue(2):1-21,21.DOI:10.12146/j.issn.2095-3135.20251115001

从专用到智用:智能体在图像复原中的进展与挑战

From Specialized Models to Agentic Systems:Progress and Challenges of Agents in Image Restoration

孙伟雄 1殷翔 2肖宏明 3顾津锦 4董超5

作者信息

  • 1. 深圳理工大学 计算机科学与人工智能学院 深圳 518107
  • 2. 复旦大学 上海 200433
  • 3. 华盛顿大学 西雅图 98195
  • 4. 计算机科学、人工智能与技术研究院 索非亚 1113
  • 5. 深圳理工大学 计算机科学与人工智能学院 深圳 518107||中国科学院深圳先进技术研究院 深圳 518055
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摘要

Abstract

As a crucial research direction in low-level computer vision,image restoration aims to reconstruct high-quality images from multiple degradations,encompassing denoising,dehazing,and super-resolution reconstruction.Traditional image restoration methods have evolved from specialized models to general models,which have improved generalization but still face significant limitations in aspects such as restoration fidelity and adaptability to cross-domain scenarios.In recent years,agent technologies—especially agent systems driven by large language models—have brought a novel solution to image restoration,leveraging their strong capabilities in cross-modal understanding,general reasoning,and natural language interaction.This paper systematically reviews the development of image restoration tasks and agent technologies,summarizes the evolution path from"specialized models"to"general models"to"agentic systems"in this field.It focuses on analyzing the cognitive architecture and core technologies of agents based on large language models,and proposes an intelligence level standard for image restoration agent systems.Finally,the paper discusses the challenges faced by agents in efficiency,generalization,quality assessment,cognitive architecture,and ethical security,and prospects future research directions including efficiency optimization and autonomous evolution,providing theoretical and practical references for the intelligent development of image restoration.

关键词

图像复原/底层视觉/智能体/大语言模型/认知架构

Key words

image restoration/low-level vision/agent/large language model/cognitive architecture

分类

信息技术与安全科学

引用本文复制引用

孙伟雄,殷翔,肖宏明,顾津锦,董超..从专用到智用:智能体在图像复原中的进展与挑战[J].集成技术,2026,15(2):1-21,21.

集成技术

2095-3135

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