C. [. Banterle-f, A Survey of Specularity Removal Methods, Computer Graphics Forum, issue.2, 2011.

A. A. Goldluecke-b, A variational model for intrinsic light field decomposition, Asian Conference on Computer Vision (ACCV), p.10, 2016.

[. Gilboa-g and C. T. Osher-s, Structuretexture image decomposition?modeling, algorithms, and parameter selection, Int. J. of Comp. Vision (IJCV), vol.67, issue.1 2, pp.111-136, 2006.

P. [. Bala-k and . Adelson-e, Bandsifting decomposition for image-based material editing, ACM Trans. Graph, vol.34, issue.163 2, pp.1-16316, 2015.

P. [. Bala-k and D. F. , Userguided white balance for mixed lighting conditions, ACM Trans. Graph. (SIGGRAPH Asia), vol.31, issue.200 2, pp.1-20010, 2012.

H. S. Bhk-*-16-]-beigpour, . Kunz-s, . Kolb-a, and . Blanz-v, Multi-view Multi-illuminant Intrinsic Dataset, Procedings of the British Machine Vision Conference 2016, 2016.
DOI : 10.5244/C.30.10

B. S. Kolb-a and . Kunz-s, A comprehensive multiilluminant dataset for benchmarking of intrinsic image algorithms, Int. Conf. on Comp. Vision (ICCV), 2015.

N. Bonneel, B. Kovacs, S. Paris, K. Balabm12, and M. J. Barron, Shape, albedo, and illumination from a single image of an unknown object, Intrinsic Decompositions for Image Editing [ IEEE Comp. Vision and Pattern Recognition (CVPR), 2012.

P. A. Bousseau and D. F. , User assisted intrinsic images, ACM Trans. Graph. (SIGGRAPH Asia), vol.28, issue.15, p.17, 2009.
DOI : 10.1145/1618452.1618476

URL : https://hal.archives-ouvertes.fr/inria-00413588

. N. Bst-*-14-]-bonneel, T. J. Sunkavalli-k, S. D. , P. S. , and P. H. , Interactive Intrinsic Video Editing, ACM Trans. Graph. (SIGGRAPH Asia), vol.33, issue.15, p.17, 2009.

. S. Bsv-*-13-]-beigpour, . Serra-m, . J. Van-de-weijer, . Benavente-r, . Vanrell-m et al., Intrinsic image evaluation on synthetic complex scenes, pp.285-289, 2013.

T. N. Bts-*-15-]-bonneel, S. D. Sunkavalli-k, P. S. , and P. H. , Blind Video Temporal Consistency, ACM Trans. Graph. (SIGGRAPH Asia), vol.34, issue.9, p.10, 2015.

[. S. Upchurch-p, . Snavely-n, and . Bala-k, OpenSurfaces: A richly annotated catalog of surface appearance, ACM Trans. Graph. (SIGGRAPH), vol.32, issue.4 5, 2013.

]. Bvdw11, . S. Beigpour, and . J. Van-de-weijer, Object recoloring based on intrinsic image estimation, International Conference on Computer Vision, pp.327-334, 2011.

B. D. Bwsb12-], W. J. , and S. G. Black-m, A naturalistic open source movie for optical flow evaluation, European Conf. on Comp. Vision (ECCV) (2012), pp.611-625

[. Bonneel-n, . Lefebvre-s, and . Drettakis-g, Relighting Photographs of Tree Canopies, IEEE Trans. on Visualization and Comp. Graphics (TVCG), vol.17, issue.10 2, pp.1459-1474, 2011.

C. J. , C. R. Fisher, and I. J. , Bayesian nonparametric intrinsic image decomposition, European Conf. on Comp. Vision (ECCV), p.14, 2014.

C. Q. Koltun-v, A simple model for intrinsic image decomposition with depth cues, Int. Conf. on Comp. Vision (ICCV), 2013.

[. , P. B. Cohen-s, and . S. Brown-m, Beyond white: Ground truth colors for color constancy correction, Int. Conf. on Comp. Vision (ICCV), 2015.

P. [. and C. W. Newman-p, Dealing with shadows: Capturing intrinsic scene appearance for image-based outdoor localisation, IEEE/RSJ International Conference on Intelligent Robots and Systems (2013), pp.2085-2092

C. Y. Shen-c, B. R. , and C. S. , Intrinsic image extraction from a single image, Journal of Information Science and Engineering, vol.25, issue.6, pp.1939-1953, 2009.

[. D. Finlayson-g, D. M. , L. C. Garces, . I. Echevarria-j, . Zhang-w et al., Intrinsic Images by Entropy Minimization, Intrinsic light fields, 2016. arxiv e-print, pp.582-595, 2004.
DOI : 10.1007/978-3-540-24672-5_46

. [. Munoz-a, . J. Lopez-moreno, and . D. Gutier-rez, Intrinsic images by clustering, Computer Graphics Forum, vol.31, issue.15, pp.14-17, 2012.

R. V. Grk-*-11-]-gehler-p, . Kiefel-m, . Zhang-l, and . Schölkopf-b, Recovering intrinsic images with a global sparsity prior on reflectance, Advances in Neural Information Processing Systems (NIPS), pp.765-773, 2011.

. [. Ghanem-b and . Wonka-p, Intrinsic scene decomposition from rgb-d images, Int. Conf. on Comp. Vision (ICCV) (2015), pp.810-818

. Hsu-e, P. S. Mertens-t, A. S. , and D. F. , Light mixture estimation for spatially varying white balance, In ACM Trans. Graph. (SIGGRAPH), vol.70, pp.1-70, 2008.

]. Hor74 and . B. Horn, Determining lightness from an image, Computer Graphics and Image Processing, vol.3, issue.4 5, pp.277-299, 1974.

H. B. Sjoberg-r, Calculating the reflectance map, Appl. Opt, vol.18, issue.11, pp.1770-1779, 1979.

. [. Wehrwein-s, . Bala-k, and . Snavely-n, Photometric ambient occlusion for intrinsic image decomposition, IEEE Trans. Pattern Anal. Mach. Intell. (TPAMI), vol.38, issue.4, pp.639-651, 2016.

H. D. Wehrwein-s, . Upchurch-p, . Bala-k, and . Snavely-n, Reasoning about photo collections using models of outdoor illumination, British Machine Vision Conference (BMVC), 2014.

I. C. Salas-j and R. B. , Evaluation of intrinsic image algorithms to detect the shadows cast by static objects outdoors, In PMC Sensors, vol.2, issue.6, 2012.

[. J. Cho-s and L. S. Tong-x, Intrinsic image decomposition using structure-texture separation and surface normals, European Conf. on Comp. Vision (ECCV), 2014.

J. X. Schofield-a and W. J. , Correlation-Based Intrinsic Image Extraction from a Single Image, pp.58-71, 2010.

K. N. Black-m, Intrinsic depth: Improving depth transfer with intrinsic images, Int. Conf. on Comp. Vision (ICCV), pp.3514-3522, 2015.

K. N. Gehler-p and . J. Black-m, Intrinsic Video, pp.360-375, 2014.

. [. Goesele-m and . Seidel-h.-p, Photometric Calibration of High Dynamic Range Cameras, Research Report MPI-I- 2005-4-005, Max-Planck-Institut für Informatik, 2003.

L. Y. Brown-m, Single image layer separation using relative smoothness, IEEE Comp. Vision and Pattern Recognition (CVPR) (2014), pp.2752-2759

L. P. Bousseau-a and . Drettakis-g, Rich intrinsic image decomposition of outdoor scenes from multiple views, IEEE Trans. on Visualization and Comp. Graphics (TVCG), vol.19, issue.2 2, pp.210-224, 2013.

[. Bousseau-a, P. S. , and D. F. Dret-takis, Coherent intrinsic images from photo collections, ACM Trans. Graph, issue.2, p.31, 2012.

N. Bonneel, B. Kovacs, S. Paris, K. Balalm71, . H. Land-e et al., Intrinsic Decompositions for Image Editing Lightness and retinex theory, J. Opt. Soc. Am, vol.61, issue.4 5, pp.1-11, 1971.
DOI : 10.1111/cgf.13149

. J. Lopez-moreno, H. S. Garces-e, and R. E. Gutierrez-d, Multiple Light Source Estimation in a Single Image, Computer Graphics Forum, vol.23, issue.8, 2013.
DOI : 10.1111/cgf.12195

[. , H. S. , and R. E. Gutier-rez, Compositing images through light source detection, Computers & Graphics, vol.34, issue.6, pp.698-707, 2010.

L. Y. Shi-b and . Xu-c, Intrinsic Image Decomposition Using Color Invariant Edge, 2009 Fifth International Conference on Image and Graphics, pp.307-312, 2009.
DOI : 10.1109/ICIG.2009.21

. [. Vanhoey-k and . Van-gool-l, Darn: a deep adversial residual network for intrinsic image decomposition, 2016.

W. L. Liu-x, . Qu-y, L. S. Wong-t.-t, . Leung-c.-s, and . Heng-p.-a, Intrinsic colorization, ACM Transactions on Graphics, vol.27, issue.5, pp.1-152, 2008.
DOI : 10.1145/1409060.1409105

L. Y. Yuan-z and . Zheng-n, Intrinsic Image Decomposition from Pair-Wise Shading Ordering, pp.83-98, 2015.

L. C. Zhou-k and L. S. , Intrinsic face image decomposition with human face priors, European Conf. on Comp. Vision (ECCV) (2014), pp.218-233

L. C. Zhou-k and L. S. , Simulating makeup through physicsbased manipulation of intrinsic image layers, IEEE Comp. Vision and Pattern Recognition (CVPR), 2015.

[. , L. S. Kang-s, and . Shum-h.-y, Estimating intrinsic images from image sequences with biased illumination, European Conf. on Comp. Vision (ECCV), pp.274-286, 2004.

O. I. Werman-m, Color lines: image specific color representation, IEEE Comp. Vision and Pattern Recognition (CVPR), pp.946-953, 2004.

P. M. Humphreys-g, Physically Based Rendering, Second Edition: From Theory To Implementation, 2010.

[. J. Houser-b, T. C. , and P. R. , Blue-black or white-gold? early stage processing and the color of 'the dress', PLoS ONE, vol.11, issue.8, pp.1-10, 2016.

R. K. , R. T. , F. M. Gavves-e, and . Tuyte-laars-t, Deep reflectance maps, p.4384, 2015.

. Ser15 and . Serra-m, Modeling, estimation and evaluation of intrinsic images considering color information, 2007.

S. N. Fusiello-a, Recovering Intrinsic Images by Minimizing Image Complexity The Eurographics Association, Smart Tools and Apps for Graphics -Eurographics Italian Chapter Conference, 2015.

S. S. Sakurikar-p and . J. Narayanan-p, Intrinsic image decomposition using focal stacks, Indian Conf. on Comp. Vision, Graph. and Image Proc. (2016), ICVGIP '16, pp.1-88

S. L. Yeo-c, Intrinsic images decomposition using a local and global sparse representation of reflectance, IEEE Comp. Vision and Pattern Recognition (CVPR), pp.697-704, 2011.

Y. J. Shen, C. L. , S. H. , and L. X. , Re-texturing by intrinsic video, Information Sciences, vol.281, issue.2, pp.726-735, 2014.
DOI : 10.1016/j.ins.2014.02.134

. Syjl11, Y. J. Shen, J. Y. , and L. X. , Intrinsic images using optimization, IEEE Comp. Vision and Pattern Recognition (CVPR) (2011), pp.3481-3487

T. M. Adelson-e and F. W. , Estimating intrinsic component images using non-linear regression, IEEE Comp. Vision and Pattern Recognition (CVPR), pp.1992-1999, 2006.

F. [. Adelson-e, Recovering intrinsic images from a single image, IEEE Trans. Pattern Anal. Mach. Intell. (TPAMI), vol.27, issue.6, pp.1459-1472, 2005.

[. M. Narihira-m and Y. S. , Direct Intrinsics: Learning Albedo-Shading Decomposition by Convolutional Regression, 2015 IEEE International Conference on Computer Vision (ICCV), pp.14-17, 2015.
DOI : 10.1109/ICCV.2015.342

. Xie-d, L. K. Liu-s, and Z. S. Zeng-b, Intrinsic decomposition for stereoscopic images, 2016 IEEE International Conference on Image Processing (ICIP), 2016.
DOI : 10.1109/ICIP.2016.7532657

Y. G. Garces-e, . Liu-y, . Dai-q, and . Gutierrez-d, A similarity measure for illustration style, ACM Transactions on Graphics, vol.33, issue.4, pp.1-8011, 2014.
DOI : 10.1145/2601097.2601131

. [. Isola-p and F. W. Krishnan-d, Learning ordinal relationships for mid-level vision, Int. Conf. on Comp. Vision (ICCV), p.14, 2015.

[. Krähenbühl-p and E. A. , Learning datadriven reflectance priors for intrinsic image decomposition, pp.14-17, 2015.

T. P. Zhao-q, . Dai-q, . Shen-l, and L. S. Wu-e, A Closed-Form Solution to Retinex with Nonlocal Texture Constraints, IEEE Transactions on Pattern Analysis and Machine Intelligence, vol.34, issue.7, pp.1437-1444, 2012.
DOI : 10.1109/TPAMI.2012.77