- 1A. Singh, âReview article digital change detection
- techniques using remotely-sensed data, â
- International journal of remote sensing, vol. 10, pp.
- -1003, 1989.
- 2F. Wu, C. Wang, H. Zhang, and B. Zhang, âChange
- detection and analysis with radarsat-1 SAR image,â
- in Geoscience and Remote Sensing Symposium,
- IGARSS 2007. IEEE International, pp. 2601-
- , 2007.
- F. Bovolo and L. Bruzzone, âA detail-preserving
- scale-driven approach to change detection in
- multitemporal SAR images,â Geoscience and Remote
- Sensing, IEEE Transactions on, vol. 43, pp. 2963-
- , 2005.
- A. Ghosh, N. S. Mishra, and S. Ghosh, âFuzzy
- clustering algorithms for unsupervised change
- detection in remote sensing images,â Information
- Sciences, vol. 181, pp. 699-715, 2011.
- S. Ghosh, N. S. Mishra, and A. Ghosh,
- âUnsupervised change detection of remotely sensed
- images using fuzzy clustering,â in Advances in
- Pattern Recognition, 2009 ICAPR'09, Seventh
- International Conference on, pp. 385-388, 2009.
- T. Celik, âA Bayesian approach to unsupervised
- multiscale change detection in synthetic aperture
- radar images,â Signal processing, vol. 90, pp. 1471-
- , 2010.
- L. Bruzzone and D. F. Prieto, âAutomatic analysis of
- the difference image for unsupervised change
- detection,â Geoscience and Remote Sensing, IEEE
- Transactions on, vol. 38, pp. 1171-1182, 2000.
- Y. Bazi, L. Bruzzone, and F. Melgani, âAn
- unsupervised approach based on the generalized
- Gaussian model to automatic change detection in
- multitemporal SAR images,â Geoscience and Remote
- Sensing, IEEE Transactions on, vol. 43, pp. 874-887,
-
- L. Paul and D. P. Ramamoorthy, âSynthetic aperture
- radar image change detection using fuzzy c-means
- clustering algorithm,â International Journal of
- Advanced Research in Computer and
- Communication Engineering, vol. 2, 2013.
- Y. Bazi, F. Melgani, and H. D. Al-Sharari,
- âUnsupervised change detection in multispectral
- remotely sensed imagery with level set methods,
- âGeoscience and Remote Sensing, IEEE Transactions
- on, vol. 48, pp. 3178-3187, 2010.
- T. Celik and K.-K. Ma, âMultitemporal image change
- detection using undecimated discrete wavelet
- transform and active contours,â Geoscience and
- Remote Sensing, IEEE Transactions on, vol. 49, pp.
- -716, 2011.
- M. Gong, Y. Cao, and Q. Wu, âA neighborhoodbased
- ratio approach for change detection in SAR
- images,â Geoscience and Remote Sensing Letters,
- IEEE, vol. 9, pp. 307-311, 2012.
- L. J. Chipman, T. M. Orr, and L. N. Graham,
- âWavelets and image fusion,â in SPIE's 1995
- International Symposium on Optical Science,
- Engineering, and Instrumentation, 1995, pp. 208-219.
- S. Osher and J. A. Sethian, âFronts propagating with
- curvature-dependent speed: algorithms based on
- Hamilton-Jacobi formulations,â Journal of
- computational physics, vol. 79, pp. 12-49, 1988.
- S. Osher and R .P. Fedkiw, âLevel set methods: an
- overview and some recent results,â Journal of
- Computational physics, vol. 169, pp. 463-502, 2001.
- T. Chan and W. Zhu, âLevel set based shape prior
- segmentation,â in Computer Vision and Pattern
- Recognition, 2005. CVPR 2005. IEEE Computer
- Society Conference on, pp. 1164-1170, 2005.
- C. Li, C. Xu, C. Gui, and M. D. Fox, âLevel set
- evolution without re-initialization: a new variational
- formulation,â in Computer Vision and Pattern
- Recognition, 2005. CVPR 2005. IEEE Computer
- Society Conference on, 2005, pp. 430-436.
- M. Ding, Z. Tian, Z. Jin, M. Xu, and C. Cao,
- âRegistration using robust kernel principal
- component for object-based change detection,â
- Geoscience and Remote Sensing Letters, IEEE, vol.
- , pp. 761-765, 2010.
- L. Cao, K. Chua, W. Chong, H. Lee, and Q. Gu, âA
- comparison of PCA, KPCA and ICA for
- dimensionality reduction in support vector machine,â
- Neurocomputing, vol. 55, pp. 321-336, 2003.
- R. BabuÅ¡ka, âFuzzy Modeling for Control Kluwer
- Academic Publishers,â Boston, MA, USA, 1998.
- D. Gustafson and W. Kessel, âFuzzy clustering with
- a fuzzy covariance matrix,â in 1978 IEEE conference
- on decision and control including the 17th
- symposium on adaptive processes, pp. 761-766,
-
|