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Papers/Realistic Blur Synthesis for Learning Image Deblurring

Realistic Blur Synthesis for Learning Image Deblurring

Jaesung Rim, Geonung Kim, Jungeon Kim, Junyong Lee, Seungyong Lee, Sunghyun Cho

2022-02-17DeblurringImage Deblurring
PaperPDFCode(official)

Abstract

Training learning-based deblurring methods demands a tremendous amount of blurred and sharp image pairs. Unfortunately, existing synthetic datasets are not realistic enough, and deblurring models trained on them cannot handle real blurred images effectively. While real datasets have recently been proposed, they provide limited diversity of scenes and camera settings, and capturing real datasets for diverse settings is still challenging. To resolve this, this paper analyzes various factors that introduce differences between real and synthetic blurred images. To this end, we present RSBlur, a novel dataset with real blurred images and the corresponding sharp image sequences to enable a detailed analysis of the difference between real and synthetic blur. With the dataset, we reveal the effects of different factors in the blur generation process. Based on the analysis, we also present a novel blur synthesis pipeline to synthesize more realistic blur. We show that our synthesis pipeline can improve the deblurring performance on real blurred images.

Results

TaskDatasetMetricValueModel
DeblurringRSBlur (trained on synthetic)Average PSNR32.08MIMO-UNet + Realistic blur
DeblurringRSBlur (trained on synthetic)Average PSNR32.06SRN-Deblur + Realistic blur
2D ClassificationRSBlur (trained on synthetic)Average PSNR32.08MIMO-UNet + Realistic blur
2D ClassificationRSBlur (trained on synthetic)Average PSNR32.06SRN-Deblur + Realistic blur
10-shot image generationRSBlur (trained on synthetic)Average PSNR32.08MIMO-UNet + Realistic blur
10-shot image generationRSBlur (trained on synthetic)Average PSNR32.06SRN-Deblur + Realistic blur
Blind Image DeblurringRSBlur (trained on synthetic)Average PSNR32.08MIMO-UNet + Realistic blur
Blind Image DeblurringRSBlur (trained on synthetic)Average PSNR32.06SRN-Deblur + Realistic blur

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