.. .. Discussion,

.. .. Conclusion,

. .. Training-methodology,

. .. Results,

.. .. Conclusion,

. .. , 25 1.2 gamut of the BT.709 and BT.2020 color space and HVS gamut represented with a CIE xy chromaticity diagram

, End-to-end scene-reffered workflow from the capture of light to the display of an image [31]

, End-to-end display-reffered workflow from the capture of light to the display of an image [31]

E. .. Different,

, L HDR in function of the luminance for (a) different diffuse white luminances, and for (b) different surround luminances

. .. , Pre-encoding process system using the Y C b C r color space, p.40

. .. , Pre-encoding process system using the ICtCp color space, p.41

. .. , Example of a luma adjustment method (source [7]), p.41

. .. , Tone-mapped examples showing improvements of the luma adjustment method (a) original image (b) classic chrominance subsampling (c) chrominance subsampling with luma adjusment method (source [45]), p.42

, 13 simplified structure of an MPEG video encoder

, QP offset dQP in function of the average luma value in 64x64 block, p.44

. Characteristics-of-the-narwaria, 49] images: (a) The dynamic range, (b) key, (b) spatial Information

, Characteristics of the Korshunov et al. [24] images: (a) The dynamic range, (b) key, (c) spatial Information

. Characteristics-of-the-zerman, 50] images: (a) The dynamic range, (b) key, (c) spatial Information

, PU function and gamma function

.. .. Hdr-vdp-2-principle, , p.61

.. .. Sony-bvm-x300-display,

, Example of a pair of images presented to the viewer, p.69

, Proposed subjective tests scale

, The dynamic range, (b) key, (c) spatial Information, Characteristics of the HDdtb images: (a)

, Example of compression artifacts on the image Showgirl: (a) The original image, (b) Compressed image, Qp 39, with Chroma Qp adaptation, (c) Compressed image, Qp 39, without Chroma Qp adaptation

, The image Market3: (a) The original image, (b) with Gaussian noise on the chroma (SNR=0.5)

, The original image, (b) gamut mismatch: BT.2020 image displayed as a BT.709 image (c) gamut mismatch: BT.709 image displayed as a BT.2020 images, The image MasonLake(1) under three conditions: (a)

. .. Qp, 80 3.10 MOS obtained from naive viewer in function of MOS obtained from expert, MOS score obtained from 14 naive viewers in function of the, p.81

. .. Qp, MOS score obtained from 9 experts in function of the, p.81

, The dynamic range, (b) key, (c) spatial Information, Characteristics of the 4Kdtb images: (a)

, with Chroma Qp adaptation, (c) Compressed image, Qp 36, without Chroma Qp adaptation, (d) Compressed image, Qp 36, 8 bits quantization for the chrominance, The image Regatta_11s under three conditions: (a) The original image, (b) Compressed image, vol.36

, Histogram of the repartition of 4Kdtb MOS score

, MOS score obtained for the database 4Kdtb in function of the Qp, p.90

, Real display spectral emissions (a) Blue component (b) Green component (c) Red component

, Unrealistic spectral emissions (a) Blue component (b) Green component (c) Red component

, HDR-VDP2 score for two different spectrums (Sim2 HDR display and Sony BVM-X300 display) applied on the database HDdtb

, Performance of HDR-VDP-2 in function of the surround luminance for (a) existing database (b) the proposed database HDdtb

, HDR-VDP2 score for two different surround luminance applied on the database Narwaria et al

, HDR-VDP2 score for different angular resolutions applied on the database Korshunov et al. (a) 20 pix/deg in function of 60 pix/deg (b) 30 pix/deg in function of 60 pix/deg (c) 80 pix/deg in function of 60 pix/deg

, MOS scores and HDR-VDP-2 scores in function of Qp for the image Regatta_24s of the database 4Kdtb

, Diagram of the proposed method to adapt SDR metrics to HDR/WCG contents, vol.108

, Different perceptually uniform luminances as a function of the linear luminance: (a) for the range 0-1000 cd/m 2 , (b) for the range 0-150 cd/m 2, p.109

, 3 SROCC performances for the 4Kdtb database for color-blind quality metrics (a) and for color quality metrics (b)

, 4 SROCC performances for the Zerman et al. database for color-blind quality metrics (a) and for color quality metrics (b)

, 5 SROCC performances for the HDdtb database for color-blind quality metrics (a) and for color quality metrics (b)

, 6 SROCC performances for the Korshunov et al. database for color-blind quality metrics (a) and for color quality metrics (b)

, SROCC performances for the Narwaria et al. database for color-blind quality metrics (a) and for color quality metrics (b)

, (c) SSIM HDR-Lab in function of the diffuse white luminance

, Subjective and objective scores for the image Regatta_24s and for 6 metrics based on the ICtCp color space

. .. , 121 6.2 HDR-VDP-2 score in fonction of MOS for (a) The complete TID2013 database, (b) the TID2013 database without the distortion: "change in color saturation

, HDR-VDP-2 CtCp scores without the chrominance subbands in function of HDR-VDP-2 CtCp with the chrominance subbands (using median weights) (Database: 4Kdtb), p.129

, HDR-VDP-2 CtCp (median weights), Luminance weights w f of (a) HDR-VDP-2 and (b)

, 5 the distribution of the value taken by each w f weight for HDR-VDP-2 CtCp, p.130

. .. , Architecture of the proposed full-reference HDR quality metric, p.134

, The 4Kdtb image Bike_ 81s (a) and the distortion map CS 5 az obtained for the image compressed with a Qp of 20 with (b) a quantization of 10 bits for the chrominances (c) a quantization of 8 bits for the chrominances

, The 4Kdtb image Bike_ 81s (a) and the distortion map CS 5 bz obtained for the image compressed with a Qp of 20 with (b) a quantization of 10 bits for the chrominances (c) a quantization of 8 bits for the chrominances

, HDR-VDP2 score in function of MOS (a) before the INLSA algorithm (b) after the INLSA algorithm

, Subjective and objective scores in function of HEVC Qp for the images (a) Bike_110s (b) Bike_20s (c) Bike_30s (d) Bike_30s

, Subjective and objective scores in function of HEVC Qp for the images (a)Regatta_11s (b) Regatta_24s (c) Regatta_80s (d) Regatta_95s

, [93]) of Narwaria et al. reference images. From left to right and from top to bottom: (a) Apartment_float_o15C (b) bausch_ lot (c) carpark_ ivc (d) CD1_serie2 (e) forest_path (f) lake (g) Light

, House072 (h) moto (i) office_ivc (j) outro022168

, Tone-mapped version (Reinhard et al. TMO [93]) of Zerman et al. reference images. From left to right and from top to bottom: (a) AirBellowsGap (b) Balloon (c)

, FireEater (d) LasVegasStore (e) Market3 (f) MasonLake(1) (g) RedwoodSunset

, Showgirl (i) Typewriter (j) UpheavalDome

, Tone-mapped version (Reinhard et al. TMO [93]) of Korshunov et al. reference images. From left to right and from top to bottom: (a), p.2

, CanadianFalls (d) DevilsBathtub (e) dragon_ 3 (f) HancockKitchenInside (g)

. Labtypewriter, LasVegasStore (i) McKeesPub (j) MtRushmore2 (k) set18 (l) set22 (m) set23 (n) set24 (o) set31 (p) set33 (q) set70 (r) showgirl (s) sintel_ 2 (t) WillyDesk

, Tone-mapped version (Reinhard et al. TMO [93]) of the HDdtb reference images. From left to right and from top to bottom: (a) FireEater (b) LasVegasStore (c)

, Market3 (d) MasonLake(1) (e) RedwoodSunset (f) Showgirl (g) Typewriter (h)

.. .. Upheavaldome,

, 93]) of the 4Kdtb reference images. From left to right and from top to bottom: (a) Bike_ 20s (b) Bike_ 30s (c) Bike_ 81s (d) Bike_ 110s (e) Regatta_ 11s (f) Regatta_ 24s (g) Regatta_ 80s (h) Re-gatta_ 95s

, Subjective and objective scores for the image Bike_20s

, Subjective and objective scores for the image Bike_30s

, Subjective and objective scores for the image Bike_81s

, Subjective and objective scores for the image Bike_110s

, Subjective and objective scores for the image Regatta_11s, p.174

, Subjective and objective scores for the image Regatta_24s, p.175

, Subjective and objective scores for the image Regatta_80s, p.175

, Subjective and objective scores for the image Regatta_95s

, Chromaticity coordinates for the color primaries and the white point of BT.709 and the BT.2020 color space

.. .. Database,

.. .. Selected-sdr-quality-metrics,

. .. , Description of HDdtb images (FireEater, LasVegasStore and Market3), p.73

, RedwoodSunset and Showgirl), Description of HDdtb images, p.74

. .. , Description of HDdtb images (Typewriter, UpheavalDome), p.75

. .. , 84 3.5 characteristics of 4Kdtb images (Bike_81s, Bike_30s and Regatta_11s), characteristics of 4Kdtb images (Bike_110s and Bike_20s), p.86

.. .. Considered,

, Performance indexes of HDR-VDP-2 for Zerman, p.95

, Performance indexes of HDR-VDP-2 on HDdtb

, SROCC for the 4Kdtb database with and without downsampling the images, p.100

, SROCC of the existing quality metrics on the considered databases, p.101

, SROCC for the HDdtb database with and without the gamut mismatch artifact, vol.112

, 2 SROCC for the HDdtb database for three metrics based on J z a z b z , J z a z b z and HDR-Lab 1000

, Performance in term of SROCC of the proposed metric trained with different databases and HDR-VDP-2

, 2 characteristics of the training databases

, Median SROCC across 1000 Train-Test Combinations database by database, p.127

, SROCC of metrics with the median weights for the training databases, p.128

, SROCC of metrics with the median weights on the validation databases, p.128

, Median performances across 1000 Train-Test Combinations on the test set, p.139

, Median SROCC across 1000 Train-Test Combinations database by database, p.140

, Performances of several metrics for (a) the complete database HDdtb (b) Only the HDdtb images with compression artifacts

, PCC of the different color-blind quality metrics on the considered databases, p.165

, PCC of the different color quality metrics on the considered databases, p.166

, SROCC of the different color-blind quality metrics on the considered databases, vol.167

, SROCC of the different color quality metrics on the considered databases, p.168

, OR of the different color-blind quality metrics on the considered databases, p.169

, OR of the different color quality metrics on the considered databases, p.170

, RMSE of the different color-blind quality metrics on the considered databases, p.171

, RMSE of the different color quality metrics on the considered databases, p.172

S. Mann, Compositing multiple pictures of the same scene, Proc. IS&T Annual Meeting, pp.50-52, 1993.

H. Arri and . Faq, Common question regarding High Dynamic Range, 2019.

H. Seetzen, W. Heidrich, W. Stuerzlinger, G. Ward, L. Whitehead et al., High dynamic range display systems, ACM transactions on graphics (TOG), vol.23, pp.760-768, 2004.

R. Stephen and . Forrest, The road to high efficiency organic light emitting devices, Organic Electronics, vol.4, pp.45-48, 2003.

, Operational practices in HDR television production, Rep BT.2408-0, 2017.

, Image parameter values for high dynamic range television for use in production and international programme exchange, Rec BT.2100-2, ITU-R, 2018.

, Conversion and coding practices for HDR/WCG Y'CbCr 4:2:0 video with PQ transfer characteristics, Rec H-Suppl, vol.15, 2017.

C. Cisco, Visual Networking Index: Forecast and Trends, 2017.

H. Sim2, , 2017.

O. Tunç, R. Ayd?n, H. Mantiuk, and . Seidel, Extending quality metrics to full luminance range images, Proc.SPIE, vol.6806, 2008.

M. Safdar, G. Cui, Y. J. Kim, and M. R. Luo, Perceptually uniform color space for image signals including high dynamic range and wide gamut, Opt. Express, vol.25, pp.15131-15151, 2017.

D. Mark, P. Fairchild, and . Chen, Brightness, lightness, and specifying color in high-dynamic-range scenes and images, Proc.SPIE, vol.7867, 2011.

M. Rousselot, É. Auffret, X. Ducloux, O. L. Meur, and R. Cozot, Impacts of Viewing Conditions on HDR-VDP2, European Signal Processing Conference (EUSIPCO), pp.1442-1446, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01952421

M. Rousselot, O. L. Meur, R. Cozot, and X. Ducloux, Quality Assessment of HDR/WCG Images Using HDR Uniform Color Spaces, Journal of Imaging, vol.5, 2019.
URL : https://hal.archives-ouvertes.fr/hal-02131890

M. Rousselot, É. Auffret, X. Ducloux, O. L. Meur, and R. Cozot, Adapting HDR images using uniform color space for SDR quality metrics, COmpression et REprésentation des Signaux Audiovisuels (CORESA 2018), 2018.

M. Rousselot, O. L. Meur, R. Cozot, and X. Ducloux, Quality metric aggregation for HDR/WCG images, 26th IEEE International Conference on Image Processing (ICIP), 2019.
URL : https://hal.archives-ouvertes.fr/hal-02265122

C. Donald, M. A. Hood, and . Finkelstein, Sensitivity to light, Handbook of Perception and Human Performance, vol.1, 1986.

A. James and . Ferwerda, Elements of early vision for computer graphics, IEEE Computer Graphics and Applications, vol.21, issue.5, pp.22-33, 2001.

T. Kunkel and E. Reinhard, A Reassessment of the Simultaneous Dynamic Range of the Human Visual System, Proceedings of the 7th Symposium on Applied Perception in Graphics and Visualization, APGV '10, pp.17-24, 2010.

. Dell, , 2016.

H. D. Ultra and . Forum, Phase A Guidelines, tech. rep., version 1.5, 2018.

P. Hanhart, V. Marco, P. Bernardo, M. Korshunov, . Pereira et al., HDR image compression: A new challenge for objective quality metrics, Sixth International Workshop on Quality of Multimedia Experience (QoMEX), pp.159-164, 2014.

X. Pan, J. Zhang, S. Wang, S. Wang, Y. Zhou et al., HDR video quality assessment: Perceptual evaluation of compressed HDR video, Journal of Visual Communication and Image Representation, vol.57, pp.76-83, 2018.

P. Korshunov, P. Hanhart, T. Richter, A. Artusi, R. Mantiuk et al., Subjective quality assessment database of HDR images compressed with JPEG XT, Seventh International Workshop on Quality of Multimedia Experience (QoMEX), pp.1-6, 2015.

A. Blake and H. Bulthoff, Shape from specularities: computation and psychophysics, Philosophical Transactions of the Royal Society of London. Series B: Biological Sciences, pp.237-252, 1991.

A. S. Ron-o-dror, E. H. Willsky, and . Adelson, Statistical characterization of realworld illumination, Journal of Vision, vol.4, pp.11-11, 2004.

S. Daly, T. Kunkel, X. Sun, S. Farrell, and P. Crum, 41.1: Distinguished Paper: Viewer Preferences for Shadow, Diffuse, Specular, and Emissive Luminance Limits of High Dynamic Range Displays, vol.44, pp.563-566, 2013.

, Parameter values for the HDTV standards for production and international programme exchange, Rec BT.709-6, 2015.

M. Pedzisz, Beyond bt, SMPTE 2013 Annual Technical Conference & Exhibition, SMPTE, vol.709, pp.1-13, 2013.

, Parameter values for ultra-high definition television systems for productionand international programme exchange, Rec BT.2020-2, 2015.

, High dynamic rangetelevision for production and international programme exchange, Rep BT.2390-5, 2018.

, Reference electro-optical transfer function for flat panel displays used in HDTVstudio production, Rec BT.1886-0, 2011.

S. Miller, M. Nezamabadi, and S. Daly, Perceptual signal coding for more efficient usage of bit codes, SMPTE Motion Imaging Journal, vol.122, pp.52-59, 2013.

, Essential parameter values for the extended image dynamic range television system for programme production, standard STD-B67, Association of Radio Industries and Businesses (ARIB), 2015.

T. Borer, A. Cotton, and P. Wilson, Perceptual Uniformity for High-Dynamic-Range Television Systems, SMPTE Motion Imaging Journal, vol.125, pp.75-84, 2016.

, High dynamic range electro-optical transfer function of mastering reference displays, Society of Motion Picture & Television Engineers, 2014.

, CIE 1976 L*A*B* colour space, Colorimetry -Part, vol.4, 1976.

, Perceptual Color Volume: Measuring the Distinguishable colors of HDR and WCG displays, 2018.

F. Ebner, D. Mark, and . Fairchild, Development and testing of a color space (IPT) with improved hue uniformity, color and Imaging Conference, vol.1998, pp.8-13, 1998.

T. Richter, On the standardization of the JPEG XT image compression, p.2013

, Picture Coding Symposium (PCS), pp.37-40, 2013.

O. Baumann, A. Okell, and J. Ström, Characterization of Processing Artifacts in High Dynamic Range, Wide Color Gamut Video, SMPTE Motion Imaging Journal, vol.127, pp.1-7, 2018.

T. Lu, F. Pu, P. Yin, T. Chen, and W. Husak, Conversion and Coding Practices for HDR/WCG ICTCP 4:2:0 Video, 2017 Data Compression Conference (DCC), pp.13-22, 2017.

A. Norkin, Fast algorithm for HDR video pre-processing, 2016 Picture Coding Symposium (PCS), pp.1-5, 2016.

J. Ström, J. Samuelsson, and K. Dovstam, Luma adjustment for high dynamic range video, 2016 Data Compression Conference (DCC), pp.319-328, 2016.

, Signalling, backward compatibility and display adaptation for HDR/WCG video coding, Rec H-Suppl, vol.18, 2017.

, Methodology for the subjective assessment of the quality of television pictures, Rec BT.500-13, 2012.

, Subjective video quality assessment methods for multimedia applications, Rec P.910, ITU-T, 2008.

M. Narwaria, M. P. Silva, P. L. Callet, and R. Pepion, Tone mapping-based high-dynamic-range image compression: study of optimization criterion and perceptual quality, Optical Engineering, vol.52, 2013.
URL : https://hal.archives-ouvertes.fr/hal-00905816

E. Zerman, G. Valenzise, and F. Dufaux, An extensive performance evaluation of full-reference HDR image quality metrics, Quality and User Experience, vol.2, p.5, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01493996

D. Hasler and S. E. Suesstrunk, Measuring colorfulness in natural images, vol.5007, 2003.

J. Kuang, G. M. Johnson, and M. D. Fairchild, iCAM06: A refined image appearance model for HDR image rendering, Special issue on High Dynamic Range Imaging, vol.18, pp.1047-3203, 2007.

R. Mantiuk, K. Kim, A. G. Rempel, and W. Heidrich, HDR-VDP-2: A Calibrated Visual Metric for Visibility and Quality Predictions in All Luminance Conditions, ACM Trans. Graph, vol.30, issue.4, 2011.

M. Narwaria, R. Mantiuk, P. Mattheiu, P. L. Silva, and . Callet, HDR-VDP-2.2: a calibrated method for objective quality prediction of high-dynamic range and standard images, Journal of Electronic Imaging, vol.24, 2015.
URL : https://hal.archives-ouvertes.fr/hal-00951337

R. Mantiuk, K. Myszkowski, and H. Seidel, A Perceptual Framework for Contrast Processing of High Dynamic Range Images, ACM Trans. Appl. Percept, vol.3, issue.3, pp.1544-3558, 2006.

E. Reinhard, M. Stark, P. Shirley, and J. Ferwerda, Photographic Tone Reproduction for Digital Images, Proceedings of the 29th Annual Conference on Computer Graphics and Interactive Techniques, SIGGRAPH '02, pp.1-58113, 2002.

G. Valenzise, F. D. Simone, P. Lauga, and F. Dufaux, Performance evaluation of objective quality metrics for HDR image compression, Proc.SPIE, vol.9217, 2014.
URL : https://hal.archives-ouvertes.fr/hal-01436204

Z. Mai, H. Mansour, R. Mantiuk, P. Nasiopoulos, R. Ward et al., 59] Specification for the use of Video and Audio Coding in Broadcast and Broadband Applications, IEEE Transactions on Image Processing, vol.20, pp.130-132, 2011.

K. Anush, A. C. Moorthy, and . Bovik, Blind image quality assessment: From natural scene statistics to perceptual quality, IEEE transactions on Image Processing, vol.20, pp.3350-3364, 2011.

A. Michele, A. C. Saad, C. Bovik, and . Charrier, Blind image quality assessment: A natural scene statistics approach in the DCT domain, IEEE transactions on Image Processing, vol.21, pp.3339-3352, 2012.

A. Mittal, A. K. Moorthy, and A. C. Bovik, No-reference image quality assessment in the spatial domain, IEEE Transactions on Image Processing, vol.21, pp.4695-4708, 2012.

G. Navaneeth-kamballur-kottayil, F. Valenzise, I. Dufaux, and . Cheng, Blind Quality Estimation by Disentangling Perceptual and Noisy Features in High Dynamic Range Images, IEEE Transactions on Image Processing, vol.27, pp.1512-1525, 2017.

N. Ponomarenko, L. Jin, O. Ieremeiev, V. Lukin, K. Egiazarian et al., Image database TID2013: Peculiarities, results and perspectives, Signal Processing, vol.30, pp.57-77, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01109219

L. Zhang, L. Zhang, X. Mou, and D. Zhang, FSIM: A Feature Similarity Index for Image Quality Assessment, IEEE Transactions on Image Processing, vol.20, pp.2378-2386, 2011.

H. Chang, H. Yang, Y. Gan, and M. Wang, Sparse feature fidelity for perceptual image quality assessment, IEEE Transactions on Image Processing, vol.22, pp.4007-4018, 2013.

Z. Wang, P. Eero, and . Simoncelli, Reduced-reference image quality assessment using a wavelet-domain natural image statistic model, Human Vision and Electronic Imaging X, vol.5666, pp.149-160, 2005.

G. Zhai, X. Wu, X. Yang, W. Lin, and W. Zhang, A psychovisual quality metric in free-energy principle, IEEE Transactions on Image Processing, vol.21, pp.41-52, 2011.

R. Soundararajan and A. C. Bovik, RRED indices: Reduced reference entropic differencing for image quality assessment, IEEE Transactions on Image Processing, vol.21, pp.517-526, 2011.

M. Narwaria, M. Silva, and P. L. Callet, HDR-VQM: An objective quality measure for high dynamic range video, Signal Processing, vol.35, pp.923-5965, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01149516

X. Zhang and B. A. Wandell, A spatial extension of CIELAB for digital colorimage reproduction, Journal of the Society for Information Display, vol.5, pp.61-63, 1997.

Z. Wang, A. C. Bovik, H. R. Sheikh, and E. P. Simoncelli, Image quality assessment: from error visibility to structural similarity, IEEE Transactions on Image Processing, vol.13, pp.600-612, 2004.

Z. Wang, L. Lu, and A. C. Bovik, Video quality assessment based on structural distortion measurement, Signal Processing, vol.19, pp.76-82, 2004.

A. Mohammed, M. S. Hassan, and . Bashraheel, Color-based structural similarity image quality assessment, 2017 8th International Conference on Information Technology (ICIT), pp.691-696, 2017.

Z. Wang, P. Eero, A. C. Simoncelli, and . Bovik, Multiscale structural similarity for image quality assessment, The Thrity-Seventh Asilomar Conference on Signals, vol.2, pp.1398-1402, 2003.

H. R. Sheikh, A. C. Bovik, and G. Veciana, An information fidelity criterion for image quality assessment using natural scene statistics, IEEE Transactions on image processing, 2005.

N. Ponomarenko, F. Silvestri, K. Egiazarian, M. Carli, J. Astola et al., On between-coefficient contrast masking of DCT basis functions, Proceedings of the third international workshop on video processing and quality metrics, vol.4, 2007.

N. Ponomarenko, O. Ieremeiev, V. Lukin, K. Egiazarian, and M. Carli, Modified image visual quality metrics for contrast change and mean shift accounting, CAD Systems in Microelectronics (CADSM), 2011.

. Jj-vos, . Van-den, and . Berg, Report on disability glare, CIE collection, vol.135, pp.1-9, 1999.

K. Kim, R. Mantiuk, and K. Lee, Measurements of achromatic and chromatic contrast sensitivity functions for an extended range of adaptation luminance, International Society for Optics and Photonics, vol.8651, 2013.

P. Eero, W. Simoncelli, and . Freeman, The steerable pyramid: a flexible architecture for multi-scale derivative computation, Proceedings., International Conference on Image Processing, vol.3, pp.444-447, 1995.

R. Mantiuk and . Hdr-vdp, Frequently Asked Questions, 2017.

A. M. Rohaly, J. Philip, J. M. Corriveau, A. A. Libert, V. Webster et al., Video quality experts group: Current results and future directions, Visual Communications and Image Processing, vol.4067, pp.742-754, 2000.

, Methods, metrics and procedures for statistical evaluation, qualification and comparison of objective quality prediction models, Rec P.1401, 2012.

R. Hamid, . Sheikh, F. Muhammad, A. C. Sabir, and . Bovik, A Statistical Evaluation of Recent Full Reference Image Quality Assessment Algorithms, IEEE Transactions on Image Processing, vol.15, pp.3440-3451, 2006.

E. Cooper-larson and M. D. Chandler, Most apparent distortion: full-reference image quality assessment and the role of strategy, Journal of Electronic Imaging, vol.19, 2010.

N. Ponomarenko, V. Lukin, A. Zelensky, K. Egiazarian, M. Carli et al., TID2008-a database for evaluation of full-reference visual quality assessment metrics, Advances of Modern Radioelectronics, vol.10, pp.30-45, 2009.

P. Hanhart, T. Martin?e?ábek, and . Ebrahimi, Subjective and objective evaluation of HDR video coding technologies, International Conference on Quality of Multimedia Experience (QoMEX), pp.1-6, 2016.

P. Hanhart, T. Martin?e?ábek, and . Ebrahimi, Towards high dynamic range extensions of HEVC: subjective evaluation of potential coding technologies, Proc.SPIE, vol.9599, 2015.

T. Vigier, L. Krasula, A. Milliat, M. Silva, and P. L. Callet, Performance and robustness of HDR objective quality metrics in the context of recent compression scenarios, Digital Media Industry and Academic Forum, pp.59-64, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01438385

P. Hanhart, V. Marco, M. Bernardo, . Pereira, M. G. António et al., Benchmarking of objective quality metrics for HDR image quality assessment, EURASIP Journal on Image and Video Processing, p.39, 2015.

. Sony, Operation Manuals: BVM-X300, 2017.

E. Reinhard, M. Stark, P. Shirley, and J. Ferwerda, Photographic tone reproduction for digital images, ACM transactions on graphics (TOG), vol.21, pp.267-276, 2002.

S. Lasserre, F. Leléannec, and E. Francois, Description of HDR sequences proposed by Technicolor, ISO/IEC JTC1/SC29/WG11 JCTVC-P0228, 2013.

J. Froehlich, S. Grandinetti, B. Eberhardt, S. Walter, A. Schilling et al., Creating cinematic wide gamut HDR-video for the evaluation of tone mapping operators and HDR-displays, Proc.SPIE, vol.9023, 2014.

D. Mark and . Fairchild, The HDR photographic survey, Color and Imaging Conference, vol.1, pp.233-238, 2007.

A. Coutrot and N. Guyader, How saliency, faces, and sound influence gaze in dynamic social scenes, Journal of Vision, vol.14, pp.5-5, 2014.
URL : https://hal.archives-ouvertes.fr/hal-01018237

J. Scott and . Daly, Visible differences predictor: an algorithm for the assessment of image fidelity, Proc.SPIE 1666, 1992.

G. J. Peter and . Barten, Formula for the contrast sensitivity of the human eye, Proc.SPIE, vol.5294, 2003.

E. Reinhard, J. Stauder, and M. Kerdranvat, An Assessment of Reference Levels in HDR Content, SMPTE Motion Imaging Journal, vol.128, issue.3, pp.20-27, 2019.

M. Narwaria, M. Silva, P. L. Callet, and R. Pépion, Impact of tone mapping in High dynamic range image compression, pp.1-6, 2014.
URL : https://hal.archives-ouvertes.fr/hal-00951331

H. Margaret, S. Pinson, and . Wolf, An objective method for combining multiple subjective data sets, Proc.SPIE, vol.5150, 2003.

A. John, R. Nelder, and . Mead, A simplex method for function minimization, The computer journal, vol.7, pp.308-313, 1965.

L. Han and M. Neumann, Effect of dimensionality on the Nelder Mead simplex method, Optimization Methods and Software 21, pp.1-16, 2006.

R. Eberhart and J. Kennedy, A new optimizer using particle swarm theory, MHS'95. Proceedings of the Sixth International Symposium on Micro Machine and Human Science, pp.39-43, 1995.

K. Okarma, Combined Full-Reference Image Quality Metric Linearly Correlated with Subjective Assessment, Artificial Intelligence and Soft Computing, pp.539-546, 2010.

T. Liu, W. Lin, and C. Kuo, Image Quality Assessment Using Multi-Method Fusion, IEEE Transactions on Image Processing, vol.22, pp.1793-1807, 2013.

T. Joe-yuchieh-lin, E. Liu, C. Wu, and . Kuo, A fusion-based video quality assessment (FVQA) index, Signal and Information Processing Association Annual Summit and Conference (APSIPA), pp.1-5, 2014.

J. Y. Lin, C. Wu, I. Katsavounidis, Z. Li, A. Aaron et al., EVQA: An ensemble-learning-based video quality assessment index, 2015 IEEE International Conference on Multimedia Expo Workshops (ICMEW), pp.1-6, 2015.

Z. Li, A. Aaron, I. Katsavounidis, A. Moorthy, and M. Manohara, Toward a practical perceptual video quality metric, The Netflix Tech Blog, 2016.

A. Choudhury and S. Daly, Combining Quality Metrics for Improved HDR Image Quality Assessment, 2019 IEEE Conference on Multimedia Information Processing and Retrieval (MIPR), pp.179-184, 2019.

E. Fredericksen and R. Hess, Estimating multiple temporal mechanisms in human vision, Vision Research, vol.38, pp.1023-1040, 1998.

T. Seybold, L. Betina, A. Koelln, H. Pasha, and . Brendel, Visibility of spatiotemporal noise in digital video, Color and Imaging Conference, vol.1, pp.20-26, 2016.

C. Meininger, Determining Visibility Thresholds for Spatial and Spatiotemporal Chromatic Noise, SMPTE Motion Imaging Journal, vol.128, pp.31-40, 2019.

N. Ponomarenko, O. Ieremeiev, V. Lukin, K. Egiazarian, L. Jin et al., Color image database TID2013: Peculiarities and preliminary results, Visual Information Processing (EUVIP), 2013.
URL : https://hal.archives-ouvertes.fr/hal-01111092

C. Bist, R. Cozot, G. Madec, and X. Ducloux, Tone compatibility between HDR displays, Applications of Digital Image Processing XXXIX, vol.9971, p.99710, 2016.
URL : https://hal.archives-ouvertes.fr/hal-02117620

P. Kovesi, Image features from phase congruency, Videre: Journal of computer vision research, vol.1, issue.3, pp.1-26, 1999.

C. Christopher, S. Yang, and . Kwok, Efficient gamut clipping for color image processing using LHS and YIQ, Optical Engineering, 2003.

K. Egiazarian, J. Astola, N. Ponomarenko, V. Lukin, F. Battisti et al., New full-reference quality metrics based on HVS, Proceedings of the Second International Workshop on Video Processing and Quality Metrics, vol.4, 2006.

F. Banterle, A. Artusi, K. Debattista, and A. Chalmers, Advanced High Dynamic Range Imaging: Theory and Practice, 2017.