HSVNet: Reconstructing HDR Image from a Single Exposure LDR Image with CNN

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초록

Most photographs are low dynamic range (LDR) images that might not perfectly describe the scene as perceived by humans due to the difference in dynamic ranges between photography and natural scenes. High dynamic range (HDR) images have been used widely to depict the natural scene as accurately as possible. Even though HDR images can be generated by an exposure bracketing method or HDR-supported cameras, most photos are still taken as LDR due to annoyance. In this paper, we propose a method that can produce an HDR image from a single arbitrary exposure LDR image. The proposed method, HSVNet, is a deep learning architecture using a Convolutional Neural Networks (CNN) based U-net. Our model uses the HSV color space that enables the network to identify saturated regions and adaptively focus on crucial components. We generated a paired LDR-HDR image dataset of diverse scenes including under/oversaturated regions for training and testing. We also show the effectiveness of our method through experiments, compared to existing methods. © 2022 by the authors. Licensee MDPI, Basel, Switzerland.

키워드

Convolutional neural networksHigh dynamic rangeHSV color spaceLow dynamic rangeSupervised learningU-net
제목
HSVNet: Reconstructing HDR Image from a Single Exposure LDR Image with CNN
저자
Lee, M.J.Rhee, C.-H.Lee, C.H.
DOI
10.3390/app12052370
발행일
2022-03
유형
Article
저널명
Applied Sciences (Switzerland)
12
5