Deep binocular tone mapping
Publication Type
Journal Article
Publication Date
6-2019
Abstract
Binocular tone mapping is studied in the previous works to generate a fusible pair of LDR images in order to convey more visual content than one single LDR image. However, the existing methods are all based on monocular tone mapping operators. It greatly restricts the preservation of local details and global contrast in a binocular LDR pair. In this paper, we proposed the first binocular tone mapping operator to more effectively distribute visual content to an LDR pair, leveraging the great representability and interpretability of deep convolutional neural network. Based on the existing binocular perception models, novel loss functions are also proposed to optimize the output pairs in terms of local details, global contrast, content distribution, and binocular fusibility. Our method is validated with a qualitative and quantitative evaluation, as well as a user study. Statistics show that our method outperforms the state-of-the-art binocular tone mapping frameworks in terms of both visual quality and time performance.
Keywords
Tone mapping, Binocular tone mapping, Binocular perception, Convolutional neural network
Discipline
Information Security
Research Areas
Information Systems and Management
Publication
Visual Computer
Volume
35
Issue
6-8
First Page
997
Last Page
1011
ISSN
0178-2789
Identifier
10.1007/s00371-019-01669-8
Publisher
Springer
Citation
ZHANG, Zhuming; HAN, Chu; HE, Shengfeng; LIU, Xueting; ZHU, Haichao; HU, Xinghong; and WONG, Tien-Tsin.
Deep binocular tone mapping. (2019). Visual Computer. 35, (6-8), 997-1011.
Available at: https://ink.library.smu.edu.sg/sis_research/7850
Additional URL
https://doi.org/10.1007/s00371-019-01669-8