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Papers/Multi-Temporal Recurrent Neural Networks For Progressive N...

Multi-Temporal Recurrent Neural Networks For Progressive Non-Uniform Single Image Deblurring With Incremental Temporal Training

Dongwon Park, Dong Un Kang, Jisoo Kim, Se Young Chun

2019-11-18ECCV 2020 8DeblurringImage DeblurringVideo Deblurring
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Abstract

Multi-scale (MS) approaches have been widely investigated for blind single image / video deblurring that sequentially recovers deblurred images in low spatial scale first and then in high spatial scale later with the output of lower scales. MS approaches have been effective especially for severe blurs induced by large motions in high spatial scale since those can be seen as small blurs in low spatial scale. In this work, we investigate alternative approach to MS, called multi-temporal (MT) approach, for non-uniform single image deblurring. We propose incremental temporal training with constructed MT level dataset from time-resolved dataset, develop novel MT-RNNs with recurrent feature maps, and investigate progressive single image deblurring over iterations. Our proposed MT methods outperform state-of-the-art MS methods on the GoPro dataset in PSNR with the smallest number of parameters.

Results

TaskDatasetMetricValueModel
DeblurringGoProPSNR31.15MT-RNN
DeblurringGoProSSIM0.945MT-RNN
DeblurringHIDE (trained on GOPRO)PSNR (sRGB)29.15MT-RNN
DeblurringHIDE (trained on GOPRO)Params (M)2.6MT-RNN
DeblurringHIDE (trained on GOPRO)SSIM (sRGB)0.918MT-RNN
2D ClassificationGoProPSNR31.15MT-RNN
2D ClassificationGoProSSIM0.945MT-RNN
2D ClassificationHIDE (trained on GOPRO)PSNR (sRGB)29.15MT-RNN
2D ClassificationHIDE (trained on GOPRO)Params (M)2.6MT-RNN
2D ClassificationHIDE (trained on GOPRO)SSIM (sRGB)0.918MT-RNN
Image DeblurringGoProPSNR31.15MT-RNN
Image DeblurringGoProSSIM0.945MT-RNN
10-shot image generationGoProPSNR31.15MT-RNN
10-shot image generationGoProSSIM0.945MT-RNN
10-shot image generationHIDE (trained on GOPRO)PSNR (sRGB)29.15MT-RNN
10-shot image generationHIDE (trained on GOPRO)Params (M)2.6MT-RNN
10-shot image generationHIDE (trained on GOPRO)SSIM (sRGB)0.918MT-RNN
10-shot image generationGoProPSNR31.15MT-RNN
10-shot image generationGoProSSIM0.945MT-RNN
1 Image, 2*2 StitchiGoProPSNR31.15MT-RNN
1 Image, 2*2 StitchiGoProSSIM0.945MT-RNN
16kGoProPSNR31.15MT-RNN
16kGoProSSIM0.945MT-RNN
Blind Image DeblurringGoProPSNR31.15MT-RNN
Blind Image DeblurringGoProSSIM0.945MT-RNN
Blind Image DeblurringHIDE (trained on GOPRO)PSNR (sRGB)29.15MT-RNN
Blind Image DeblurringHIDE (trained on GOPRO)Params (M)2.6MT-RNN
Blind Image DeblurringHIDE (trained on GOPRO)SSIM (sRGB)0.918MT-RNN

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