248.

[Cover] [Contents] [Index]

Page 320

Shafer, G. (1979) A Mathematical Theory of Evidence. Princeton, NJ: Princeton University Press.

——(1987) ‘Belief functions and possibility measures’, in J.C.Bezdek (ed) Analysis of Fuzzy Information. Vol. 1: Mathematics and Logic. Boca Raton, FL: CRC Press.

Shafer, G. and Logan, R. (1987) ‘Implementing Dempster’s rule for hierarchical evidence’, Artificial Intelligence 33, 271–98.

Shannon, C.E. and Weaver, W. (1963) The Mathematical Theory of Communication. Chicago: University of Illinois Press.

Siegel, A.F. (1982) ‘Robust regression using repeated medians’, Biometrika 69, 242–4.

Singh, A. (1984) ‘Some clarifications about the pairwise divergence method in remote sensing’, International Journal of Remote Sensing 5, 623–7.

Skidmore, A.K. (1989) ‘A comparison of techniques for calculating gradient and aspect from a gridded digital elevation model’, International Journal of Geographical Information Systems 3, 323–34.

Skidmore, A.K., Turner, B.J., Brinkhof, W. and Knowle, E. (1997) ‘Performance of a neural network: mapping forests using GIS and remotely sensed data’, Photogrammetric Engineering and Remote Sensing 63, 501–514.

Smith, G.M. and Milton, E.J. (1999) ‘The use of the empirical line method to calibrate remotely sensed data to reflectance’, International Journal of Remote Sensing 20, 2653–62.

Smith, J.A., Lin, T.L. and Ranson, K. (1980) ‘The Lambertian assumption and Landsat data’, Photogrammetric Engineering and Remote Sensing 46, 1183–9.

Solaiman, B., Koffi, R.K., Mouchot, M.C. and Million, A. (1998) ‘An information fusion method for multispectral image classification post-processing’, IEEE Transactions on Geoscience and Remote Sensing 36, 395–406.

Srinivasan, A. and Richards, J.A. (1990) ‘Knowledge-based techniques for multi-source classification’, International Journal of Remote Sensing 11, 505–25.

Starck, J.-L., Murtagh, F. and Bijaoui, A. (1998) Image Processing and Data Analysis. Cambridge: Cambridge University Press.

Stehman, S.V. (1992) ‘Comparison of systematic and random sampling for estimating the accuracy of maps generated from remotely sensed data’, Photogrammetric Engineering and Remote Sensing 58, 1343–50.

Stehman, S.V. and Czaplewinski, R.L. (1998) ‘Design and analysis for thematic map accuracy assessment—fundamental principles’, Remote Sensing of Environment 64, 331–44.

Strahler, A.H. (1980) ‘The use of prior probabilities in maximum likehood classification of remotely sensed data’, Remote Sensing of Environment 10, 135–63.

——(1981) ‘Stratification of natural vegetation for forest and rangeland

[Cover] [Contents] [Index]


Classification Methods for Remotely Sensed Data
Classification Methods for Remotely Sensed Data, Second Edition
ISBN: 1420090720
EAN: 2147483647
Year: 2001
Pages: 354

flylib.com © 2008-2017.
If you may any questions please contact us: flylib@qtcs.net