Deep HDR Hallucination for Inverse Tone Mapping

Inverse Tone Mapping (ITM) methods attempt to reconstruct High Dynamic Range (HDR) information from Low Dynamic Range (LDR) image content. The dynamic range of well-exposed areas must be expanded and any missing information due to over/under-exposure must be recovered (hallucinated). The majority of...

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Main Authors: Demetris Marnerides, Thomas Bashford-Rogers, Kurt Debattista
Format: Article
Language:English
Published: MDPI AG 2021-06-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/21/12/4032
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spelling doaj-5653262404ff4b4eb20feb092817c7022021-06-30T23:55:33ZengMDPI AGSensors1424-82202021-06-01214032403210.3390/s21124032Deep HDR Hallucination for Inverse Tone MappingDemetris Marnerides0Thomas Bashford-Rogers1Kurt Debattista2WMG, University of Warwick, Coventry CV4 7AL, UKDepartment of Computer Science and Creative Technologies, University of the West of England, Bristol BS16 1GY, UKWMG, University of Warwick, Coventry CV4 7AL, UKInverse Tone Mapping (ITM) methods attempt to reconstruct High Dynamic Range (HDR) information from Low Dynamic Range (LDR) image content. The dynamic range of well-exposed areas must be expanded and any missing information due to over/under-exposure must be recovered (hallucinated). The majority of methods focus on the former and are relatively successful, while most attempts on the latter are not of sufficient quality, even ones based on Convolutional Neural Networks (CNNs). A major factor for the reduced inpainting quality in some works is the choice of loss function. Work based on Generative Adversarial Networks (GANs) shows promising results for image synthesis and LDR inpainting, suggesting that GAN losses can improve inverse tone mapping results. This work presents a GAN-based method that hallucinates missing information from badly exposed areas in LDR images and compares its efficacy with alternative variations. The proposed method is quantitatively competitive with state-of-the-art inverse tone mapping methods, providing good dynamic range expansion for well-exposed areas and plausible hallucinations for saturated and under-exposed areas. A density-based normalisation method, targeted for HDR content, is also proposed, as well as an HDR data augmentation method targeted for HDR hallucination.https://www.mdpi.com/1424-8220/21/12/4032high dynamic rangeinverse tone mappingdeep learning
collection DOAJ
language English
format Article
sources DOAJ
author Demetris Marnerides
Thomas Bashford-Rogers
Kurt Debattista
spellingShingle Demetris Marnerides
Thomas Bashford-Rogers
Kurt Debattista
Deep HDR Hallucination for Inverse Tone Mapping
Sensors
high dynamic range
inverse tone mapping
deep learning
author_facet Demetris Marnerides
Thomas Bashford-Rogers
Kurt Debattista
author_sort Demetris Marnerides
title Deep HDR Hallucination for Inverse Tone Mapping
title_short Deep HDR Hallucination for Inverse Tone Mapping
title_full Deep HDR Hallucination for Inverse Tone Mapping
title_fullStr Deep HDR Hallucination for Inverse Tone Mapping
title_full_unstemmed Deep HDR Hallucination for Inverse Tone Mapping
title_sort deep hdr hallucination for inverse tone mapping
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2021-06-01
description Inverse Tone Mapping (ITM) methods attempt to reconstruct High Dynamic Range (HDR) information from Low Dynamic Range (LDR) image content. The dynamic range of well-exposed areas must be expanded and any missing information due to over/under-exposure must be recovered (hallucinated). The majority of methods focus on the former and are relatively successful, while most attempts on the latter are not of sufficient quality, even ones based on Convolutional Neural Networks (CNNs). A major factor for the reduced inpainting quality in some works is the choice of loss function. Work based on Generative Adversarial Networks (GANs) shows promising results for image synthesis and LDR inpainting, suggesting that GAN losses can improve inverse tone mapping results. This work presents a GAN-based method that hallucinates missing information from badly exposed areas in LDR images and compares its efficacy with alternative variations. The proposed method is quantitatively competitive with state-of-the-art inverse tone mapping methods, providing good dynamic range expansion for well-exposed areas and plausible hallucinations for saturated and under-exposed areas. A density-based normalisation method, targeted for HDR content, is also proposed, as well as an HDR data augmentation method targeted for HDR hallucination.
topic high dynamic range
inverse tone mapping
deep learning
url https://www.mdpi.com/1424-8220/21/12/4032
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