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Papers/Patch Craft: Video Denoising by Deep Modeling and Patch Ma...

Patch Craft: Video Denoising by Deep Modeling and Patch Matching

Gregory Vaksman, Michael Elad, Peyman Milanfar

2021-03-25ICCV 2021 10DenoisingPatch MatchingVideo DenoisingColor Image Denoising
PaperPDFCode(official)

Abstract

The non-local self-similarity property of natural images has been exploited extensively for solving various image processing problems. When it comes to video sequences, harnessing this force is even more beneficial due to the temporal redundancy. In the context of image and video denoising, many classically-oriented algorithms employ self-similarity, splitting the data into overlapping patches, gathering groups of similar ones and processing these together somehow. With the emergence of convolutional neural networks (CNN), the patch-based framework has been abandoned. Most CNN denoisers operate on the whole image, leveraging non-local relations only implicitly by using a large receptive field. This work proposes a novel approach for leveraging self-similarity in the context of video denoising, while still relying on a regular convolutional architecture. We introduce a concept of patch-craft frames - artificial frames that are similar to the real ones, built by tiling matched patches. Our algorithm augments video sequences with patch-craft frames and feeds them to a CNN. We demonstrate the substantial boost in denoising performance obtained with the proposed approach.

Results

TaskDatasetMetricValueModel
VideoDAVIS sigma20PSNR36.82PaCNet
VideoSet8 sigma50PSNR29.66PaCNet
VideoDAVIS sigma30PSNR34.79PaCNet
VideoSet8 sigma30PSNR32.05PaCNet
VideoSet8 sigma10PSNR37.06PaCNet
VideoDAVIS sigma40PSNR33.34PaCNet
VideoSet8 sigma40PSNR30.7PaCNet
VideoSet8 sigma20PSNR33.94PaCNet
VideoDAVIS sigma10PSNR39.97PaCNet
VideoDAVIS sigma50PSNR32.2PaCNet
DenoisingCBSD68 sigma15PSNR33.95PaCNet
DenoisingCBSD68 sigma25PSNR31.22PaCNet
DenoisingCBSD68 sigma50PSNR27.93PaCNet
3D ArchitectureCBSD68 sigma15PSNR33.95PaCNet
3D ArchitectureCBSD68 sigma25PSNR31.22PaCNet
3D ArchitectureCBSD68 sigma50PSNR27.93PaCNet

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