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Papers/Real-world Video Deblurring: A Benchmark Dataset and An Ef...

Real-world Video Deblurring: A Benchmark Dataset and An Efficient Recurrent Neural Network

Zhihang Zhong, Ye Gao, Yinqiang Zheng, Bo Zheng, Imari Sato

2021-06-30ECCV 2020 8DeblurringImage DeblurringVideo Deblurring
PaperPDFCode(official)

Abstract

Real-world video deblurring in real time still remains a challenging task due to the complexity of spatially and temporally varying blur itself and the requirement of low computational cost. To improve the network efficiency, we adopt residual dense blocks into RNN cells, so as to efficiently extract the spatial features of the current frame. Furthermore, a global spatio-temporal attention module is proposed to fuse the effective hierarchical features from past and future frames to help better deblur the current frame. Another issue that needs to be addressed urgently is the lack of a real-world benchmark dataset. Thus, we contribute a novel dataset (BSD) to the community, by collecting paired blurry/sharp video clips using a co-axis beam splitter acquisition system. Experimental results show that the proposed method (ESTRNN) can achieve better deblurring performance both quantitatively and qualitatively with less computational cost against state-of-the-art video deblurring methods. In addition, cross-validation experiments between datasets illustrate the high generality of BSD over the synthetic datasets. The code and dataset are released at https://github.com/zzh-tech/ESTRNN.

Results

TaskDatasetMetricValueModel
DeblurringGoProPSNR31.07ESTRNN
DeblurringGoProSSIM0.9023ESTRNN
DeblurringBeam-Splitter Deblurring (BSD)PSNR31.39ESTRNN
2D ClassificationGoProPSNR31.07ESTRNN
2D ClassificationGoProSSIM0.9023ESTRNN
2D ClassificationBeam-Splitter Deblurring (BSD)PSNR31.39ESTRNN
Image DeblurringGoProPSNR31.07ESTRNN
Image DeblurringGoProSSIM0.9023ESTRNN
10-shot image generationGoProPSNR31.07ESTRNN
10-shot image generationGoProSSIM0.9023ESTRNN
10-shot image generationBeam-Splitter Deblurring (BSD)PSNR31.39ESTRNN
10-shot image generationGoProPSNR31.07ESTRNN
10-shot image generationGoProSSIM0.9023ESTRNN
1 Image, 2*2 StitchiGoProPSNR31.07ESTRNN
1 Image, 2*2 StitchiGoProSSIM0.9023ESTRNN
16kGoProPSNR31.07ESTRNN
16kGoProSSIM0.9023ESTRNN
Blind Image DeblurringGoProPSNR31.07ESTRNN
Blind Image DeblurringGoProSSIM0.9023ESTRNN
Blind Image DeblurringBeam-Splitter Deblurring (BSD)PSNR31.39ESTRNN

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