计算机科学
图像复原
人工智能
路径(计算)
语言模型
嵌入
钥匙(锁)
编码(集合论)
适应(眼睛)
标杆管理
降级(电信)
机器学习
保险丝(电气)
代表(政治)
相似性(几何)
效率低下
投影(关系代数)
比例(比率)
水准点(测量)
图像(数学)
统一模型
抽象
方案(数学)
作者
Ren Bin,Zamfir, Eduard,Wu, Zongwei,Li Ya-Wei,Li, Yidi,Paudel, Danda Pani,Timofte, Radu,Yang, Ming-Hsuan,Van Gool, Luc,Sebe, Nicu
标识
DOI:10.48550/arxiv.2504.14249
摘要
Restoring any degraded image efficiently via just one model has become increasingly significant and impactful, especially with the proliferation of mobile devices. Traditional solutions typically involve training dedicated models per degradation, resulting in inefficiency and redundancy. More recent approaches either introduce additional modules to learn visual prompts, significantly increasing model size, or incorporate cross-modal transfer from large language models trained on vast datasets, adding complexity to the system architecture. In contrast, our approach, termed AnyIR, takes a unified path that leverages inherent similarity across various degradations to enable both efficient and comprehensive restoration through a joint embedding mechanism, without scaling up the model or relying on large language models.Specifically, we examine the sub-latent space of each input, identifying key components and reweighting them first in a gated manner. To fuse the intrinsic degradation awareness and the contextualized attention, a spatial-frequency parallel fusion strategy is proposed for enhancing spatial-aware local-global interactions and enriching the restoration details from the frequency perspective. Extensive benchmarking in the all-in-one restoration setting confirms AnyIR's SOTA performance, reducing model complexity by around 82\% in parameters and 85\% in FLOPs. Our code will be available at our Project page (https://amazingren.github.io/AnyIR/)
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