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2HDED:Net for Joint Depth Estimation and Image Deblurring from a Single Out-of-Focus Image | IEEE Conference Publication | IEEE Xplore

2HDED:Net for Joint Depth Estimation and Image Deblurring from a Single Out-of-Focus Image


Abstract:

Depth estimation and all-in-focus image restoration from defocused RGB images are related problems, although most of the existing methods address them separately. The few...Show More

Abstract:

Depth estimation and all-in-focus image restoration from defocused RGB images are related problems, although most of the existing methods address them separately. The few approaches that solve both problems use a pipeline processing to derive a depth or defocus map as an intermediary product that serves as a support for image deblurring, which remains the primary goal. In this paper, we propose a new Deep Neural Network (DNN) architecture that performs in parallel the tasks of depth estimation and image deblurring, by attaching them the same importance. Our Two-headed Depth Estimation and Deblurring Network (2HDED:NET) is an encoder-decoder network for Depth from Defocus (DFD) that is extended with a deblurring branch, sharing the same encoder. The network is tested on NYU-Depth V2 dataset and compared with several state-of-the-art methods for depth estimation and image deblurring.
Date of Conference: 16-19 October 2022
Date Added to IEEE Xplore: 18 October 2022
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Conference Location: Bordeaux, France

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