A super-resolution method of combined color image with depth map based on deep learning
Pages 7 - 11
Abstract
The task of a qualitative increase in image resolution is one of the most current issues of digital image processing. Super-resolution (SR) methods are the group of signal-processing algorithms, which allow producing a high-resolution (HR) image from single or multiple low-resolution (LR) images of the same scene. Convolutional neural network (CNN) has been widely applied to color image and depth map super-resolution problem, where a high-resolution depth map can be restored from a LR depth map with the guidance of an additional HR or LR color image of the same scene. Proposed method is based on the algorithm, that HR depth map is reconstructed by joint LR depth map and corresponding LR intensity image. The Joint double branch network (JDBNet) is formed with a multi-scale upsampling conception for solving image super-resolution problems. Such approach can considerably enhance the condition of the recovered HR depth images. Low-resolution intensity image and low-resolution depth map of the same scene are input data for training networks. The output data of the system is a high-resolution depth map. The performance of represented methods was evaluated by Root Mean Square Error (RMSE).
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Index Terms
- A super-resolution method of combined color image with depth map based on deep learning
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December 2020
597 pages
ISBN:9781450387828
DOI:10.1145/3444370
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- Sun Yat-Sen University
- CARLETON UNIVERSITY: INSTITUTE FOR INTERDISCIPLINARY STUDIES
- Beijing University of Posts and Telecommunications
- Guangdong University of Technology: Guangdong University of Technology
- Deakin University
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Association for Computing Machinery
New York, NY, United States
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Published: 04 January 2021
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CIAT 2020
CIAT 2020: 2020 International Conference on Cyberspace Innovation of Advanced Technologies
December 4 - 6, 2020
Guangzhou, China
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CIAT 2020 Paper Acceptance Rate 94 of 232 submissions, 41%;
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