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Papers/TDAN: Temporally Deformable Alignment Network for Video Su...

TDAN: Temporally Deformable Alignment Network for Video Super-Resolution

Yapeng Tian, Yulun Zhang, Yun Fu, Chenliang Xu

2018-12-07Super-ResolutionOptical Flow EstimationVideo Super-Resolution
PaperPDFCodeCode

Abstract

Video super-resolution (VSR) aims to restore a photo-realistic high-resolution (HR) video frame from both its corresponding low-resolution (LR) frame (reference frame) and multiple neighboring frames (supporting frames). Due to varying motion of cameras or objects, the reference frame and each support frame are not aligned. Therefore, temporal alignment is a challenging yet important problem for VSR. Previous VSR methods usually utilize optical flow between the reference frame and each supporting frame to wrap the supporting frame for temporal alignment. Therefore, the performance of these image-level wrapping-based models will highly depend on the prediction accuracy of optical flow, and inaccurate optical flow will lead to artifacts in the wrapped supporting frames, which also will be propagated into the reconstructed HR video frame. To overcome the limitation, in this paper, we propose a temporal deformable alignment network (TDAN) to adaptively align the reference frame and each supporting frame at the feature level without computing optical flow. The TDAN uses features from both the reference frame and each supporting frame to dynamically predict offsets of sampling convolution kernels. By using the corresponding kernels, TDAN transforms supporting frames to align with the reference frame. To predict the HR video frame, a reconstruction network taking aligned frames and the reference frame is utilized. Experimental results demonstrate the effectiveness of the proposed TDAN-based VSR model.

Results

TaskDatasetMetricValueModel
Super-ResolutionMSU Video Super Resolution Benchmark: Detail Restoration1 - LPIPS0.721TDAN
Super-ResolutionMSU Video Super Resolution Benchmark: Detail RestorationERQAv1.00.706TDAN
Super-ResolutionMSU Video Super Resolution Benchmark: Detail RestorationFPS0.493TDAN
Super-ResolutionMSU Video Super Resolution Benchmark: Detail RestorationPSNR30.244TDAN
Super-ResolutionMSU Video Super Resolution Benchmark: Detail RestorationQRCRv1.00.609TDAN
Super-ResolutionMSU Video Super Resolution Benchmark: Detail RestorationSSIM0.883TDAN
Super-ResolutionMSU Video Super Resolution Benchmark: Detail RestorationSubjective score5.454TDAN
3D Human Pose EstimationMSU Video Super Resolution Benchmark: Detail Restoration1 - LPIPS0.721TDAN
3D Human Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationERQAv1.00.706TDAN
3D Human Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationFPS0.493TDAN
3D Human Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationPSNR30.244TDAN
3D Human Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationQRCRv1.00.609TDAN
3D Human Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationSSIM0.883TDAN
3D Human Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationSubjective score5.454TDAN
VideoMSU Video Super Resolution Benchmark: Detail Restoration1 - LPIPS0.721TDAN
VideoMSU Video Super Resolution Benchmark: Detail RestorationERQAv1.00.706TDAN
VideoMSU Video Super Resolution Benchmark: Detail RestorationFPS0.493TDAN
VideoMSU Video Super Resolution Benchmark: Detail RestorationPSNR30.244TDAN
VideoMSU Video Super Resolution Benchmark: Detail RestorationQRCRv1.00.609TDAN
VideoMSU Video Super Resolution Benchmark: Detail RestorationSSIM0.883TDAN
VideoMSU Video Super Resolution Benchmark: Detail RestorationSubjective score5.454TDAN
Pose EstimationMSU Video Super Resolution Benchmark: Detail Restoration1 - LPIPS0.721TDAN
Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationERQAv1.00.706TDAN
Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationFPS0.493TDAN
Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationPSNR30.244TDAN
Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationQRCRv1.00.609TDAN
Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationSSIM0.883TDAN
Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationSubjective score5.454TDAN
3DMSU Video Super Resolution Benchmark: Detail Restoration1 - LPIPS0.721TDAN
3DMSU Video Super Resolution Benchmark: Detail RestorationERQAv1.00.706TDAN
3DMSU Video Super Resolution Benchmark: Detail RestorationFPS0.493TDAN
3DMSU Video Super Resolution Benchmark: Detail RestorationPSNR30.244TDAN
3DMSU Video Super Resolution Benchmark: Detail RestorationQRCRv1.00.609TDAN
3DMSU Video Super Resolution Benchmark: Detail RestorationSSIM0.883TDAN
3DMSU Video Super Resolution Benchmark: Detail RestorationSubjective score5.454TDAN
3D Face AnimationMSU Video Super Resolution Benchmark: Detail Restoration1 - LPIPS0.721TDAN
3D Face AnimationMSU Video Super Resolution Benchmark: Detail RestorationERQAv1.00.706TDAN
3D Face AnimationMSU Video Super Resolution Benchmark: Detail RestorationFPS0.493TDAN
3D Face AnimationMSU Video Super Resolution Benchmark: Detail RestorationPSNR30.244TDAN
3D Face AnimationMSU Video Super Resolution Benchmark: Detail RestorationQRCRv1.00.609TDAN
3D Face AnimationMSU Video Super Resolution Benchmark: Detail RestorationSSIM0.883TDAN
3D Face AnimationMSU Video Super Resolution Benchmark: Detail RestorationSubjective score5.454TDAN
2D Human Pose EstimationMSU Video Super Resolution Benchmark: Detail Restoration1 - LPIPS0.721TDAN
2D Human Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationERQAv1.00.706TDAN
2D Human Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationFPS0.493TDAN
2D Human Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationPSNR30.244TDAN
2D Human Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationQRCRv1.00.609TDAN
2D Human Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationSSIM0.883TDAN
2D Human Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationSubjective score5.454TDAN
3D Absolute Human Pose EstimationMSU Video Super Resolution Benchmark: Detail Restoration1 - LPIPS0.721TDAN
3D Absolute Human Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationERQAv1.00.706TDAN
3D Absolute Human Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationFPS0.493TDAN
3D Absolute Human Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationPSNR30.244TDAN
3D Absolute Human Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationQRCRv1.00.609TDAN
3D Absolute Human Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationSSIM0.883TDAN
3D Absolute Human Pose EstimationMSU Video Super Resolution Benchmark: Detail RestorationSubjective score5.454TDAN
Video Super-ResolutionMSU Video Super Resolution Benchmark: Detail Restoration1 - LPIPS0.721TDAN
Video Super-ResolutionMSU Video Super Resolution Benchmark: Detail RestorationERQAv1.00.706TDAN
Video Super-ResolutionMSU Video Super Resolution Benchmark: Detail RestorationFPS0.493TDAN
Video Super-ResolutionMSU Video Super Resolution Benchmark: Detail RestorationPSNR30.244TDAN
Video Super-ResolutionMSU Video Super Resolution Benchmark: Detail RestorationQRCRv1.00.609TDAN
Video Super-ResolutionMSU Video Super Resolution Benchmark: Detail RestorationSSIM0.883TDAN
Video Super-ResolutionMSU Video Super Resolution Benchmark: Detail RestorationSubjective score5.454TDAN
3D Object Super-ResolutionMSU Video Super Resolution Benchmark: Detail Restoration1 - LPIPS0.721TDAN
3D Object Super-ResolutionMSU Video Super Resolution Benchmark: Detail RestorationERQAv1.00.706TDAN
3D Object Super-ResolutionMSU Video Super Resolution Benchmark: Detail RestorationFPS0.493TDAN
3D Object Super-ResolutionMSU Video Super Resolution Benchmark: Detail RestorationPSNR30.244TDAN
3D Object Super-ResolutionMSU Video Super Resolution Benchmark: Detail RestorationQRCRv1.00.609TDAN
3D Object Super-ResolutionMSU Video Super Resolution Benchmark: Detail RestorationSSIM0.883TDAN
3D Object Super-ResolutionMSU Video Super Resolution Benchmark: Detail RestorationSubjective score5.454TDAN
1 Image, 2*2 StitchiMSU Video Super Resolution Benchmark: Detail Restoration1 - LPIPS0.721TDAN
1 Image, 2*2 StitchiMSU Video Super Resolution Benchmark: Detail RestorationERQAv1.00.706TDAN
1 Image, 2*2 StitchiMSU Video Super Resolution Benchmark: Detail RestorationFPS0.493TDAN
1 Image, 2*2 StitchiMSU Video Super Resolution Benchmark: Detail RestorationPSNR30.244TDAN
1 Image, 2*2 StitchiMSU Video Super Resolution Benchmark: Detail RestorationQRCRv1.00.609TDAN
1 Image, 2*2 StitchiMSU Video Super Resolution Benchmark: Detail RestorationSSIM0.883TDAN
1 Image, 2*2 StitchiMSU Video Super Resolution Benchmark: Detail RestorationSubjective score5.454TDAN

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