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Defocus Map Estimation and Deblurring from a Single Dual-Pixel Image

About

We present a method that takes as input a single dual-pixel image, and simultaneously estimates the image's defocus map -- the amount of defocus blur at each pixel -- and recovers an all-in-focus image. Our method is inspired from recent works that leverage the dual-pixel sensors available in many consumer cameras to assist with autofocus, and use them for recovery of defocus maps or all-in-focus images. These prior works have solved the two recovery problems independently of each other, and often require large labeled datasets for supervised training. By contrast, we show that it is beneficial to treat these two closely-connected problems simultaneously. To this end, we set up an optimization problem that, by carefully modeling the optics of dual-pixel images, jointly solves both problems. We use data captured with a consumer smartphone camera to demonstrate that, after a one-time calibration step, our approach improves upon prior works for both defocus map estimation and blur removal, despite being entirely unsupervised.

Shumian Xin, Neal Wadhwa, Tianfan Xue, Jonathan T. Barron, Pratul P. Srinivasan, Jiawen Chen, Ioannis Gkioulekas, Rahul Garg• 2021

Related benchmarks

TaskDatasetResultRank
Monocular Depth EstimationNYU v2 (test)--
257
Disparity EstimationFlyingThings3D 2k images (val)
Disp. AI(1)0.3018
6
Disparity PredictionFlyingThings3D (test)
AI(1)0.302
6
All-In-Focus Image ReconstructionFlyingThings3D 2k images (val)
AIF PSNR18.13
5
All-in-Focus PredictionFlyingThings3D (test)
PSNR (dB)18.13
5
All-in-Focus PredictionNYU v2 (test)
PSNR (dB)16.7
5
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