S. Ashbindu, Digital change detection techniques using remotelysensed data, Int. J. Remote Sens, vol.10, issue.6, pp.989-1003, 1989.

M. Baisantry, D. S. Negi, and O. P. Manocha, Change vector analysis using enhanced PCA and inverse triangular function-based thresholding, Def. Sci. J, vol.62, issue.4, pp.236-242, 2012.

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.

L. Bruzzone and F. Bovolo, A novel framework for the design of change-detection systems for very-high-resolution remote sensing images, Proc. IEEE, vol.101, issue.3, pp.609-630, 2013.

L. Bruzzone and D. F. Prieto, Automatic analysis of the difference image for unsupervised change detection, IEEE Trans. Geosci. Remote Sens, vol.38, issue.3, pp.1171-1182, 2000.

L. Chaari, J. C. Pesquet, J. Y. Tourneret, P. Ciuciu, and A. Benazza-benyahia, A hierarchical bayesian model for frame representation, IEEE Trans. Signal Process, vol.58, issue.11, pp.5560-5571, 2010.
URL : https://hal.archives-ouvertes.fr/hal-00692261

L. Chaari, J. Y. Tourneret, and H. Batatia, Sparse Bayesian regularization using Bernoulli-Laplacian priors, Signal Process. Conference, pp.1-5, 2013.

G. Chen and G. J. Hay, An airborne lidar sampling strategy to model forest canopy height from quickbird imagery and geobia, Remote Sens. Environ, vol.115, issue.6, pp.1532-1542, 2011.

M. D. Chen, Segmentation for object-based image analysis: a review of algorithms and challenges from remote sensing perspective, J. Photogramm. Remote Sens, vol.150, pp.115-134, 2019.

P. Coppin, I. Jonckheere, and E. Lambin, Digital change detection methods in ecosystem monitoring: a review, Int. J. Remote Sens, vol.25, pp.1565-1596, 2004.

N. Dobigeon, A. O. Hero, and J. Y. Tourneret, Hierarchical Bayesian sparse image reconstruction with application to MRFM, IEEE Trans. Image Process, vol.18, issue.9, pp.2059-2070, 2009.
URL : https://hal.archives-ouvertes.fr/hal-00324075

V. A. Krylov, G. Moser, S. B. Serpico, and J. Zerubia, False discovery rate approach to unsupervised image change detection, IEEE Trans. Image Process, vol.25, issue.10, pp.4704-4718, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01347028

C. Kwan, Change detection using original and fused landsat and worldview images, Proceedings of the IEEE Ubiquitous Computing, Electronics & Mobile Communication Conference, pp.10-12, 2019.

C. Kwan, Simple and effective cloud-and shadow-detection algorithms for landsat and worldview images, vol.14, pp.125-133, 2020.

M. A. Lebedev, Change detection in remote sensing images using conditional adversarial networks, Int. Arch. Photogramm. Remote Sens. Spat. Inf. Sci, 2018.

G. Liu, J. Delon, Y. Gousseau, and F. Tupin, Unsupervised change detection between multi-sensor high resolution satellite images, pp.2435-2439, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01433616

S. Liu, F. Bovolo, L. Bruzzone, and P. Du, Hierarchical unsupervised change detection in multitemporal hyperspectral images, IEEE Trans. Geosci. Remote Sens, vol.53, issue.1, pp.244-260, 2015.

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

W. Liu, J. Yang, J. Zhao, and L. Yang, A novel method of unsupervised change detection using multi-temporal polsar images, Remote Sens, vol.9, issue.11, p.1135, 2017.

D. Lu, Change detection techniques, Int. J. Remote Sens, vol.25, issue.12, pp.2365-2401, 2004.

P. Lv, Y. Zhong, J. Zhao, and L. Zhang, Unsupervised change detection based on hybrid conditional random field model for high spatial resolution remote sensing imagery, IEEE Trans. Geosci. Remote Sens, vol.56, issue.7, pp.4002-4015, 2018.

A. Prakash and R. P. Gupta, Land-use mapping and change detection in a coal mining area: a case study in the jharia coalfield, India. Int. J. Remote Sens, vol.19, issue.3, pp.391-410, 1998.

N. Pustelnik, A. Benazza-benhayia, Y. Zheng, and J. C. Pesquet, Wavelet-based image deconvolution and reconstruction, Wiley Encyclopedia of Electrical and Electronics Engineering, pp.1-34, 1999.
URL : https://hal.archives-ouvertes.fr/hal-01164833

S. Réjichi and F. Chaabane, Satellite image time series classification and analysis using an adapted graph labeling, 8th International Workshop on the Analysis of Multitemporal Remote Sensing Images, MultiTemp, pp.1-4, 2015.

S. Réjichi and F. Chaabane, Spatio-temporal regions' similarity framework for VHR satellite image time series analysis, IEEE International Geoscience and Remote Sensing Symposium, pp.2845-2848, 2017.

C. Robert and G. Castella, Monte Carlo Statistical Methods, 2004.

T. L. Sohl, Change analysis in the united arab emirates: an investigation of techniques, Photogramm. Eng. Remote Sens, vol.65, issue.4, pp.475-484, 1999.

G. C. Tiao and W. Y. Tan, Bayesian analysis of random-effect models in the analysis of variance. I. Posterior distribution of variancecomponents, Biometrika, vol.52, issue.1/2, pp.37-53, 1965.

M. Volpi, Supervised change detection in VHR images using contextual information and support vector machines, Int. J. Appl. Earth Observ. Geoinf, vol.20, pp.77-85, 2013.

X. Wang, Object-based change detection in urban areas from high spatial resolution images based on multiple features and ensemble learning, Remote Sens, vol.10, issue.2, p.276, 2018.

Y. Zheng, A. Fraysse, and T. Rodet, Efficient variational Bayesian approximation method based on subspace optimization, IEEE Trans. Image Process, vol.24, issue.2, pp.681-693, 2015.
URL : https://hal.archives-ouvertes.fr/hal-00990003