Dynamic Range Expansion Using Cumulative Histogram Learning for High Dynamic Range Image Generation

In modern digital photographs, most images have low dynamic range (LDR) formats, which means that the range of light intensities from the darkest to the brightest is much lower than the range that can be perceived by the human eye. Therefore, to visualize images as naturally as possible on devices t...

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Bibliographic Details
Main Authors: Hanbyol Jang, Kihun Bang, Jinseong Jang, Dosik Hwang
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
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Online Access:https://ieeexplore.ieee.org/document/9007464/
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Summary:In modern digital photographs, most images have low dynamic range (LDR) formats, which means that the range of light intensities from the darkest to the brightest is much lower than the range that can be perceived by the human eye. Therefore, to visualize images as naturally as possible on devices that display them in high dynamic range (HDR) format, the LDR images need to be converted into HDR images. The aim of this study was to develop an adaptive inverse tone mapping operator (iTMO) that can convert a single LDR image into a realistic HDR image based on artificial neural networks. In contrast to conventional iTMO algorithms, our technique was developed by learning the complicated relationship between various LDR–HDR pair images, which enabled nearly ground-truth HDR images to be generated from various types of LDR images. The novel learning technique is called cumulative histogram-based learning and color difference learning. The superior performance of our technique over conventional methods was assessed through objective evaluations of various types of LDR and HDR images.
ISSN:2169-3536