References
- Bandyopadhyay , S. and Maulik , U. 2002 . An evolution technique based on K-means algorithm for optimal clustering in RN . Information Science , 146 : 221 – 237 .
- Cocks , T. , Jenssen , R. , Stewart , A. , Wilson , I. and Shields , T. The HyMap airborne hyperspectral sensor: the system, calibration and performance . Proceedings of the 1st EASeL Workshop on Imaging Spectroscopy . October 6–8 1998 , Zürich , Switzerland. pp. 37 – 43 . Paris : EARSeL .
- Hu , P.X. , Lu , Q.M. , Shu , R. and Wang , J.Y. 2005 . An airborne pushbroom hyperspectral imager with wide field of view (in Chinese) . Chinese Optics Letters , 3 : 689 – 691 .
- Jimenez , L.O. , Rivera-Medina , J.L. , Rodriguez-Diaz , E. , Arzuaga-Cruz , E. and Ramirez-Velez , M. 2005 . Integration of spatial and spectral information by means of unsupervised extraction and classification for homogenous objects applied to multispectral and hyperspectral data . IEEE Transactions on Geoscience and Remote Sensing , 43 : 844 – 851 .
- Keshava , N. and Mustard , J.F. 2002 . Spectral unmixing . IEEE Signal Processing Magazine , 19 : 44 – 57 .
- Kramer , H.J. 1996 . Observation of the Earth and Its Environment: Survey of Missions and Sensors , 3rd , Berlin : Springer-Verlag .
- Luo , M. , Ma , Y.F. and Zhang , H.J. A spatial constrained K-means approach to image segmentation . Proceedings of the Joint Conference of the Fourth International Conference on Information, Communications and Signal Processing and the Fourth Pacific Rim Conference on Multimedia . December 15–18 2003 , Singapore . pp. 738 – 742 .
- Maitra , R. 2009 . Initializing partition-optimization algorithms . IEEE Transaction on Computational Biology and Bioinformatics , 6 : 144 – 157 .
- Mignotte , M. 2011 . A de-texturing and spatially constrained K-means approach for image segmentation . Pattern Recognition Letters , 32 : 359 – 367 .
- Plaza , A. , Benediktsson , J.A. , Boardman , J. , Brazile , J. , Bruzzone , L. , Camps-Valls , G. , Chanussot , J. , Fauvel , M. , Gamba , P. , Gualtieri , J.A. , Marconcini , M. , Tilton , J.C. and Trianni , G. 2009 . Recent advances in techniques for hyperspectral image processing . Remote Sensing of Environment , 113 : S110 – S122 .
- Richards , J. and Jia , X. 2006 . Remote Sensing Digital Image Analysis: An Introduction , Berlin : Springer-Verlag .
- Souci , J.S. , Hanou , I. and Puchalski , D. 2009 . High-resolution remote sensing image analysis for early detection and response planning for emerald ash borer . Photogrammetric Engineering and Remote Sensing , 75 : 905 – 909 .
- Tadjudin , S. and Landgrebe , D. 1998 . “ Classification of high dimensional data with limited training samples ” . In PhD thesis , USA : Purdue University .
- Weng , Q. , Hu , X. and Lu , D. 2008 . Extracting impervious surfaces from medium spatial resolution multispectral and hyperspectral imagery: a comparison . International Journal of Remote Sensing , 29 : 3209 – 3232 .
- Wulder , M. , Franklin , S.E. and White , J.C. 2004 . Sensitivity of hyperclustering and labeling land cover to Landsat image acquisition data . International Journal of Remote Sensing , 25 : 5337 – 5344 .