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Papers/Spatio-Temporal Deformable Attention Network for Video Deb...

Spatio-Temporal Deformable Attention Network for Video Deblurring

Huicong Zhang, Haozhe Xie, Hongxun Yao

2022-07-22DeblurringVideo Deblurring
PaperPDFCode(official)

Abstract

The key success factor of the video deblurring methods is to compensate for the blurry pixels of the mid-frame with the sharp pixels of the adjacent video frames. Therefore, mainstream methods align the adjacent frames based on the estimated optical flows and fuse the alignment frames for restoration. However, these methods sometimes generate unsatisfactory results because they rarely consider the blur levels of pixels, which may introduce blurry pixels from video frames. Actually, not all the pixels in the video frames are sharp and beneficial for deblurring. To address this problem, we propose the spatio-temporal deformable attention network (STDANet) for video delurring, which extracts the information of sharp pixels by considering the pixel-wise blur levels of the video frames. Specifically, STDANet is an encoder-decoder network combined with the motion estimator and spatio-temporal deformable attention (STDA) module, where motion estimator predicts coarse optical flows that are used as base offsets to find the corresponding sharp pixels in STDA module. Experimental results indicate that the proposed STDANet performs favorably against state-of-the-art methods on the GoPro, DVD, and BSD datasets.

Results

TaskDatasetMetricValueModel
DeblurringDVDPSNR33.05STDAN
DeblurringDVDSSIM0.9374STDAN
DeblurringGoProPSNR32.29STDAN
DeblurringGoProSSIM0.9313STDAN
2D ClassificationDVDPSNR33.05STDAN
2D ClassificationDVDSSIM0.9374STDAN
2D ClassificationGoProPSNR32.29STDAN
2D ClassificationGoProSSIM0.9313STDAN
10-shot image generationDVDPSNR33.05STDAN
10-shot image generationDVDSSIM0.9374STDAN
10-shot image generationGoProPSNR32.29STDAN
10-shot image generationGoProSSIM0.9313STDAN
Blind Image DeblurringDVDPSNR33.05STDAN
Blind Image DeblurringDVDSSIM0.9374STDAN
Blind Image DeblurringGoProPSNR32.29STDAN
Blind Image DeblurringGoProSSIM0.9313STDAN

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