TasksSotADatasetsPapersMethodsSubmitAbout
Papers With Code 2

A community resource for machine learning research: papers, code, benchmarks, and state-of-the-art results.

Explore

Notable BenchmarksAll SotADatasetsPapersMethods

Community

Submit ResultsAbout

Data sourced from the PWC Archive (CC-BY-SA 4.0). Built by the community, for the community.

Papers/Prompt-based Ingredient-Oriented All-in-One Image Restorat...

Prompt-based Ingredient-Oriented All-in-One Image Restoration

Hu Gao, Depeng Dang

2023-09-06DeblurringImage DeblurringImage RestorationAllSingle Image Deraining
PaperPDFCode(official)

Abstract

Image restoration aims to recover the high-quality images from their degraded observations. Since most existing methods have been dedicated into single degradation removal, they may not yield optimal results on other types of degradations, which do not satisfy the applications in real world scenarios. In this paper, we propose a novel data ingredient-oriented approach that leverages prompt-based learning to enable a single model to efficiently tackle multiple image degradation tasks. Specifically, we utilize a encoder to capture features and introduce prompts with degradation-specific information to guide the decoder in adaptively recovering images affected by various degradations. In order to model the local invariant properties and non-local information for high-quality image restoration, we combined CNNs operations and Transformers. Simultaneously, we made several key designs in the Transformer blocks (multi-head rearranged attention with prompts and simple-gate feed-forward network) to reduce computational requirements and selectively determines what information should be persevered to facilitate efficient recovery of potentially sharp images. Furthermore, we incorporate a feature fusion mechanism further explores the multi-scale information to improve the aggregated features. The resulting tightly interlinked hierarchy architecture, named as CAPTNet, extensive experiments demonstrate that our method performs competitively to the state-of-the-art.

Results

TaskDatasetMetricValueModel
DeblurringHIDE (trained on GOPRO)PSNR (sRGB)31.86CAPTNet
DeblurringHIDE (trained on GOPRO)SSIM (sRGB)0.949CAPTNet
Rain RemovalTest1200PSNR34.77CAPTNet
Rain RemovalTest1200SSIM0.937CAPTNet
Rain RemovalRain100LPSNR39.22CAPTNet
Rain RemovalRain100LSSIM0.981CAPTNet
2D ClassificationHIDE (trained on GOPRO)PSNR (sRGB)31.86CAPTNet
2D ClassificationHIDE (trained on GOPRO)SSIM (sRGB)0.949CAPTNet
Image DeblurringGoProPSNR33.74CAPTNet
Image DeblurringGoProSSIM0.967CAPTNet
10-shot image generationHIDE (trained on GOPRO)PSNR (sRGB)31.86CAPTNet
10-shot image generationHIDE (trained on GOPRO)SSIM (sRGB)0.949CAPTNet
10-shot image generationGoProPSNR33.74CAPTNet
10-shot image generationGoProSSIM0.967CAPTNet
1 Image, 2*2 StitchiGoProPSNR33.74CAPTNet
1 Image, 2*2 StitchiGoProSSIM0.967CAPTNet
16kGoProPSNR33.74CAPTNet
16kGoProSSIM0.967CAPTNet
Blind Image DeblurringHIDE (trained on GOPRO)PSNR (sRGB)31.86CAPTNet
Blind Image DeblurringHIDE (trained on GOPRO)SSIM (sRGB)0.949CAPTNet

Related Papers

Unsupervised Part Discovery via Descriptor-Based Masked Image Restoration with Optimized Constraints2025-07-16Modeling Code: Is Text All You Need?2025-07-15All Eyes, no IMU: Learning Flight Attitude from Vision Alone2025-07-15Generative Latent Kernel Modeling for Blind Motion Deblurring2025-07-12Is Diversity All You Need for Scalable Robotic Manipulation?2025-07-08DESIGN AND IMPLEMENTATION OF ONLINE CLEARANCE REPORT.2025-07-07Is Reasoning All You Need? Probing Bias in the Age of Reasoning Language Models2025-07-03LD-RPS: Zero-Shot Unified Image Restoration via Latent Diffusion Recurrent Posterior Sampling2025-07-01