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Papers/PromptIR: Prompting for All-in-One Blind Image Restoration

PromptIR: Prompting for All-in-One Blind Image Restoration

Vaishnav Potlapalli, Syed Waqas Zamir, Salman Khan, Fahad Shahbaz Khan

2023-06-22DenoisingImage DenoisingRain RemovalImage RestorationAll
PaperPDFCode(official)

Abstract

Image restoration involves recovering a high-quality clean image from its degraded version. Deep learning-based methods have significantly improved image restoration performance, however, they have limited generalization ability to different degradation types and levels. This restricts their real-world application since it requires training individual models for each specific degradation and knowing the input degradation type to apply the relevant model. We present a prompt-based learning approach, PromptIR, for All-In-One image restoration that can effectively restore images from various types and levels of degradation. In particular, our method uses prompts to encode degradation-specific information, which is then used to dynamically guide the restoration network. This allows our method to generalize to different degradation types and levels, while still achieving state-of-the-art results on image denoising, deraining, and dehazing. Overall, PromptIR offers a generic and efficient plugin module with few lightweight prompts that can be used to restore images of various types and levels of degradation with no prior information on the corruptions present in the image. Our code and pretrained models are available here: https://github.com/va1shn9v/PromptIR

Results

TaskDatasetMetricValueModel
Image RestorationCDD-11Average PSNR (dB)25.9PromptIR
Image RestorationCDD-11SSIM0.8499PromptIR
Image Restoration3-DegradationsAverage PSNR32.06PromptIR
Image Restoration3-DegradationsSSIM0.913PromptIR
10-shot image generationCDD-11Average PSNR (dB)25.9PromptIR
10-shot image generationCDD-11SSIM0.8499PromptIR
10-shot image generation3-DegradationsAverage PSNR32.06PromptIR
10-shot image generation3-DegradationsSSIM0.913PromptIR
Unified Image Restoration3-DegradationsAverage PSNR32.06PromptIR
Unified Image Restoration3-DegradationsSSIM0.913PromptIR

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