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Burst Denoising with Kernel Prediction Networks

About

We present a technique for jointly denoising bursts of images taken from a handheld camera. In particular, we propose a convolutional neural network architecture for predicting spatially varying kernels that can both align and denoise frames, a synthetic data generation approach based on a realistic noise formation model, and an optimization guided by an annealed loss function to avoid undesirable local minima. Our model matches or outperforms the state-of-the-art across a wide range of noise levels on both real and synthetic data.

Ben Mildenhall, Jonathan T. Barron, Jiawen Chen, Dillon Sharlet, Ren Ng, Robert Carroll• 2017

Related benchmarks

TaskDatasetResultRank
Joint Demosaicking and DenoisingREDS4 Low Noise
PSNR33.46
35
Joint Demosaicking and DenoisingREDS4 High Noise
PSNR31.21
35
Burst DenoisingGrayscale burst denoising set (val)
Gain x136.47
10
Burst DenoisingGrayscale Burst Denoising dataset 39 (test)
Gain (x1)36.47
9
Burst Denoisingcolor burst denoising set (test)
Gain x138.86
9
Video DenoisingReal indoor sRGB (test)
PSNR39.77
7
Video Denoising1080p Video (test)
Inference Time (s)0.89
6
Video DenoisingReal indoor Raw (test)
PSNR43.06
5
Video DenoisingSynthetic (test)
Ew7.99
5
Burst DenoisingGray-scale burst denoising (test)
Gain x136.47
5
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