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
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Joint Demosaicking and Denoising | REDS4 Low Noise | PSNR33.46 | 35 | |
| Joint Demosaicking and Denoising | REDS4 High Noise | PSNR31.21 | 35 | |
| Burst Denoising | Grayscale burst denoising set (val) | Gain x136.47 | 10 | |
| Burst Denoising | Grayscale Burst Denoising dataset 39 (test) | Gain (x1)36.47 | 9 | |
| Burst Denoising | color burst denoising set (test) | Gain x138.86 | 9 | |
| Video Denoising | Real indoor sRGB (test) | PSNR39.77 | 7 | |
| Video Denoising | 1080p Video (test) | Inference Time (s)0.89 | 6 | |
| Video Denoising | Real indoor Raw (test) | PSNR43.06 | 5 | |
| Video Denoising | Synthetic (test) | Ew7.99 | 5 | |
| Burst Denoising | Gray-scale burst denoising (test) | Gain x136.47 | 5 |
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