2020
DOI: 10.1017/atsip.2020.5
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Fully-automatic inverse tone mapping algorithm based on dynamic mid-level tone mapping

Abstract: High Dynamic Range (HDR) displays can show images with higher color contrast levels and peak luminosities than the common Low Dynamic Range (LDR) displays. However, most existing video content is recorded and/or graded in LDR format. To show LDR content on HDR displays, it needs to be up-scaled using a so-called inverse tone mapping algorithm. Several techniques for inverse tone mapping have been proposed in the last years, going from simple approaches based on global and local operators to more advanced algor… Show more

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Cited by 7 publications
(7 citation statements)
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“…In this paper, we present comprehensive inverse tone mapping, artifact suppression, and a highlight enhancement pipeline for video sequences designed to address the challenges described above. This work significantly advances our earlier contributions, strategically extending our inverse tone mapping approach for LDR images, initially introduced in [13,32], and seamlessly integrating it with our decontouring algorithm detailed in [31] to formulate a comprehensive LDR-to-HDR conversion pipeline optimized for video content. Furthermore, we introduce new steps for artifact suppression and a novel step for highlight enhancement, with the explicit aim of elevating the quality of the resultant HDR video sequence.…”
mentioning
confidence: 84%
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“…In this paper, we present comprehensive inverse tone mapping, artifact suppression, and a highlight enhancement pipeline for video sequences designed to address the challenges described above. This work significantly advances our earlier contributions, strategically extending our inverse tone mapping approach for LDR images, initially introduced in [13,32], and seamlessly integrating it with our decontouring algorithm detailed in [31] to formulate a comprehensive LDR-to-HDR conversion pipeline optimized for video content. Furthermore, we introduce new steps for artifact suppression and a novel step for highlight enhancement, with the explicit aim of elevating the quality of the resultant HDR video sequence.…”
mentioning
confidence: 84%
“…Traditionally, iTM methods have been designed to create HDR images with the best subjective quality when viewed on HDR screens. These methods vary in complexity and approach, ranging from simple techniques that retain key attributes of the LDR content such as contrast and color [8][9][10][11][12][13][14], to more complex machine learning-based techniques [15][16][17][18][19][20][21]. In addition, other LDR-to-HDR conversion methods, known as single-image HDR reconstruction (SI-HDR) methods, have recently emerged.…”
Section: Oledmentioning
confidence: 99%
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“…Currently, few subjective studies [19,43,59,[81][82][83] are designed for SDR-to-HDR procedure (rather between different HDR). Similar to [19], we judge if output HDR is better than origin SDR.…”
Section: Subjective Experimentsmentioning
confidence: 99%
“…The merging process requires carefully removing the effect of moving objects and many techniques have been proposed for this purpose [11][12]. In the current state of imaging technology, high dynamic range of natural scenes can be captured quite reliably, and the recent focus is mainly on improving the speed of operation and reconstruction of HDR from a single LDR image using deep learning approaches [13].…”
Section: Introductionmentioning
confidence: 99%