T. E. Bell, Remote sensing, IEEE Spectrum, vol.32, issue.3, pp.24-31, 1995.

C. Elachi and J. Van-zyl, Introduction to the physics and techniques of remote sensing, 2nd Edition, Wiley series in remote sensing, 2006.

J. A. Richards and X. Jia, Remote sensing digital image analysis: an introduction, 2006.

J. B. Campbell and R. H. Wynne, Introduction to remote sensing, 2011.

F. Bovolo and L. Bruzzone, The time variable in data fusion: A change de-1160 tection perspective, IEEE Geosci. Remote Sens. Mag, vol.3, issue.3, pp.8-26, 2015.

A. Singh, Review Article Digital change detection techniques using remotely-sensed data, Int. J. Remote Sens, vol.10, issue.6, pp.989-1003, 1989.

P. Du, S. Liu, J. Xia, and Y. Zhao, Information fusion techniques for change detection from multi-temporal remote sensing images, Information Fu-1165 sion, vol.14, pp.19-27, 2013.

G. Xian, C. Homer, and J. Fry, Updating the 2001 national land cover database impervious surface products to 2006 using Landsat imagery change detection methods, Remote Sensing of Environment, vol.113, issue.6, pp.1133-1147, 2009.

J. Prendes, M. Chabert, F. Pascal, A. Giros, and J. Tourneret, A new multivariate statistical model for change detection in images acquired by homogeneous and heterogeneous sensors, IEEE Trans. Image Process, vol.24, issue.3, pp.799-812, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01127988

C. Wu, B. Du, X. Cui, and L. Zhang, A post-classification change detection 1175 method based on iterative slow feature analysis and Bayesian soft fusion, Remote Sensing of Environment, vol.199, pp.241-255, 2017.

H. Luo, C. Liu, C. Wu, and X. Guo, Urban change detection based on Dempster-Shafer theory for multitemporal very high-resolution imagery, Remote Sensing, vol.10, p.980, 2018.

, Union of Concerned Scientists, UCS Satellite Database, 2017.

M. Mura, S. Prasad, F. Pacifici, P. Gamba, J. Chanussot et al., Challenges and opportunities of multimodality and data fusion in remote sensing, Proc. IEEE, vol.103, issue.9, pp.1585-1601, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01128431

F. Bovolo and L. Bruzzone, A theoretical framework for unsupervised change detection based on change vector analysis in the polar domain, IEEE Trans. Geosci. Remote Sens, vol.45, issue.1, pp.218-236, 2007.

F. Bovolo, S. Marchesi, and L. Bruzzone, A framework for automatic and unsupervised detection of multiple changes in multitemporal images, IEEE Trans. Geosci. Remote Sens, vol.50, issue.6, pp.2196-2212, 2012.

A. A. Nielsen, K. Conradsen, and J. J. Simpson, Multivariate alteration detection (MAD) and MAF postprocessing in multispectral, bitemporal image data: New approaches to change detection studies, Remote Sens. Envi-1195 ronment, vol.64, pp.1-19, 1998.

A. A. Nielsen, The Regularized Iteratively Reweighted MAD Method for Change Detection in Multi-and Hyperspectral Data, IEEE Trans. Image Process, vol.16, issue.2, pp.463-478, 2007.

V. Ferraris, N. Dobigeon, Q. Wei, and M. Chabert, Robust fusion of multiband images with different spatial and spectral resolutions for change detection, IEEE Trans. Computational Imaging, vol.3, issue.2, pp.175-186, 2017.

V. Ferraris, N. Dobigeon, Q. Wei, and M. Chabert, Detecting changes between optical images of different spatial and spectral resolutions: A fusionbased approach, IEEE Trans. Geosci. Remote Sens, vol.56, issue.3, pp.1566-1205, 2018.
URL : https://hal.archives-ouvertes.fr/hal-02539644

K. Kotwal and S. Chaudhuri, A novel approach to quantitative evaluation of hyperspectral image fusion techniques, Information Fusion, vol.14, issue.1, pp.5-18, 2013.

K. Kotwal and S. Chaudhuri, A bayesian approach to visualization-oriented 1210 hyperspectral image fusion, Information Fusion, vol.14, issue.4, pp.349-360, 2013.

H. Song, B. Huang, K. Zhang, and H. Zhang, Spatio-spectral fusion of satellite images based on dictionary-pair learning, Information Fusion, vol.18, pp.148-160, 2014.

H. Ghassemian, A review of remote sensing image fusion methods, Infor-1215 mation Fusion, vol.32, pp.75-89, 2016.

S. Li, X. Kang, L. Fang, J. Hu, and H. Yin, Pixel-level image fusion: A survey of the state of the art, Information Fusion, vol.33, pp.100-112, 2017.

V. Ferraris, N. Dobigeon, Q. Wei, and M. Chabert, Change detection be-1220 tween multi-band images using a robust fusion-based approach, Proc. IEEE Int. Conf. Acoust., Speech and Signal Process, pp.3346-3350, 2017.

V. Ferraris, N. Yokoya, N. Dobigeon, and M. Chabert, A comparative study of fusion-based change detection methods for multi-band images with dif-1225 ferent spectral and spatial resolutions, Proc. IEEE Int. Conf. Geosci. Remote Sens. (IGARSS), pp.5021-5024, 2018.

Q. Wei, N. Dobigeon, and J. Tourneret, Bayesian Fusion of Multi-Band Images, IEEE J. Sel. Topics Signal Process, vol.9, issue.6, pp.1117-1127, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01187286

N. Yokoya, T. Yairi, and A. Iwasaki, Coupled nonnegative matrix factorization 1230 unmixing for hyperspectral and multispectral data fusion, IEEE Trans. Geosci. Remote Sens, vol.50, issue.2, pp.528-537, 2012.

M. Simões, J. Dias, L. Almeida, and J. Chanussot, A convex formulation for hyperspectral image superresolution via subspace-based regularization, IEEE Trans. Geosci. Remote Sens, vol.6, issue.53, pp.3373-3388, 2015.

Q. Wei, N. Dobigeon, and J. Tourneret, Fast Fusion of Multi-Band Images Based on Solving a Sylvester Equation, IEEE Trans. Image Process, vol.24, issue.11, pp.4109-4121, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01187314

N. Yokoya, N. Mayumi, and A. Iwasaki, Cross-Calibration for Data Fusion of EO-1/Hyperion and Terra/ASTER, IEEE J. Sel. Topics Appl. Earth, vol.6, issue.2, pp.419-426, 1240.

L. Loncan, L. B. De-almeida, J. M. Bioucas-dias, X. Briottet, J. Chanussot et al.,

M. A. Tourneret, G. Veganzones, Q. Vivone, N. Wei, and . Yokoya, Hyperspectral pansharpening: A review, IEEE Geosci. Remote Sens. Mag, vol.3, issue.3, pp.27-46, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01403205

R. D. Johnson and E. S. Kasischke, Change vector analysis: A technique for the multispectral monitoring of land cover and condition, Int. J. Remote Sens, vol.19, issue.3, pp.411-426, 1998.

C. Févotte and N. Dobigeon, Nonlinear hyperspectral unmixing with robust 1250 nonnegative matrix factorization, IEEE Trans. Image Process, vol.24, issue.12, pp.4810-4819, 2015.

J. Yang, J. Wright, T. S. Huang, and Y. Ma, Image super-resolution via sparse representation, IEEE Trans. Image Process, vol.19, issue.11, pp.2861-2873, 2010.

N. Zhao, Q. Wei, A. Basarab, N. Dobigeon, D. Kouame et al., Fast Single Image Super-Resolution Using a New Analytical Solution for 2 -2 Problems, IEEE Trans. Image Process, vol.25, issue.8, pp.3683-3697, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01373784

M. Elad and A. Feuer, Restoration of a single superresolution image from several blurred, noisy, and undersampled measured images

, Image Process, vol.6, issue.12, pp.1646-1658, 1997.

R. C. Hardie, M. T. Eismann, and G. L. Wilson, MAP estimation for hyperspectral image resolution enhancement using an auxiliary sensor, IEEE Trans. Image Process, vol.13, issue.9, pp.1174-1184, 2004.

M. T. Eismann and R. C. Hardie, Hyperspectral resolution enhancement us-1265 ing high-resolution multispectral imagery with arbitrary response functions, IEEE Trans. Image Process, vol.43, issue.3, pp.455-465, 2005.

Y. Zhang, S. De, P. Backer, and . Scheunders, Noise-resistant wavelet-based Bayesian fusion of multispectral and hyperspectral images, IEEE Trans. Geosci. Remote Sens, vol.47, issue.11, pp.3834-3843, 2009.

Q. Wei, J. Bioucas-dias, N. Dobigeon, and J. Tourneret, Hyperspectral and multispectral image fusion based on a sparse representation, IEEE Trans. Geosci. Remote Sens, vol.53, issue.7, pp.3658-3668, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01168121

E. J. Candés, X. Li, Y. Ma, and J. Wright, Robust principal component analysis?, Journal of the ACM (JACM), vol.58, issue.3, p.11, 2011.

M. J. Canty, Image analysis, classification and change detection in remote sensing: with algorithms for ENVI/IDL and Python, 2014.

P. Ghamisi, N. Yokoya, J. Li, W. Liao, S. Liu et al., Advances in hyperspectral image and signal processing: A comprehensive overview of the state of the art, IEEE Geosci. Remote Sensing Mag, vol.1280, issue.4, pp.37-78, 2017.

S. Liu, D. Marinelli, L. Bruzzone, and F. Bovolo, A review of change detection in multitemporal hyperspectral images: Current techniques, applications, and challenges, IEEE Geosci. Remote Sensing Mag, vol.7, issue.2, pp.140-158, 2019.

L. Wald, T. Ranchin, and M. Mangolini, Fusion of satellite images of different spatial resolutions: assessing the quality of resulting images, Photogrammetric engineering and remote sensing, vol.63, pp.691-699, 1997.

W. W. Peterson, T. G. Birdsall, and W. Fox, The theory of signal detectability, IRE Trans. Inf. Theory, vol.4, issue.4, pp.171-212, 1954.

M. S. Pepe, Receiver operating characteristic methodology, J. Am. Stat. Ass, vol.95, issue.449, pp.308-311, 2000.

T. Fawcett, An introduction to ROC analysis, Pattern Recognition Lett, vol.27, pp.861-874, 2006.

J. Inglada and G. Mercier, A new statistical similarity measure for change 1295 detection in multitemporal SAR images and its extension to multiscale change analysis, IEEE Trans. Geosci. Remote Sens, vol.45, issue.5, pp.1432-1445, 2007.

M. Pham, G. Mercier, and J. Michel, Change detection between SAR images using a pointwise approach and graph theory, IEEE Trans. Geosci
URL : https://hal.archives-ouvertes.fr/hal-01865181

, Remote Sens, vol.54, issue.4, pp.2020-2032, 2016.

T. Hastie, R. Tibshirani, and J. H. Friedman, The elements of statistical learning: data mining, inference, and prediction, 2009.

J. A. Hanley and B. J. Mcneil, The meaning and use of the area under a 1305 receiver operating characteristic (ROC) curve, Radiology, vol.143, issue.1, pp.29-36, 1982.

A. P. Bradley, The use of the area under the roc curve in the evaluation of machine learning algorithms, Pattern Recognition, vol.30, issue.7, pp.1145-1159, 1997.

S. J. Mason and N. E. Graham, Areas beneath the relative operating characteristics (ROC) and relative operating levels (ROL) curves: Statistical significance and interpretation, Quarterly J. the Royal Meteorological Society, vol.128, pp.2145-2166, 2002.

P. A. Flach, J. Hernandez-orallo, and C. Ferri, A coherent interpretation of 1315 AUC as a measure of aggregated classification performance, Proc. Int. Conf. Machine Learning (ICML), pp.657-664, 2011.

V. Ferraris, N. Dobigeon, and M. Chabert, Robust fusion algorithms for unsupervised change detection between multi-band optical images -A comprehensive case study -Complementary results, 1320 URL, 2020.

, United States Geological Survey, p.8, 2017.

A. European-space, , 2017.

, Airborne visible / infrared imaging spectrometer (AVIRIS, 2017.

V. Ferraris, N. Dobigeon, Y. C. Cavalcanti, T. Oberlin, and M. Chabert, Coupled dictionary learning for unsupervised change detection between 1335 multi-sensor remote sensing images, Computer Vision and Image Understanding, vol.189, 2019.

A. K. Gupta and D. K. Nagar, Matrix Variate Distribution, in Monographs and Surveys in Pure and Applied Mathematics, 1999.