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It is hoped that research into links between remote sensing,
GIS, and spatial analysis will continue and more applications
will be developed. The urban application in this paper has
produced valuable insights into the manner in which residential
development can be measured and modeled. In particular the
increased amount of detail now possible, and the effect of
development constraints on density profiles. It has produced
results which may be used for urban monitoring management,
as well as for prescribing planning decisions.
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Table 1. Classification results using equal and unequal prior probabilities
International Archives of Photogrammetry and Remote Sensing. Vol. XXXI, Part B4. Vienna 1996
Dwelling Type Census Equal Priors Unequal Priors
census tracts Area 96 Pixels Area 96 Error Pixels Area % Error
Detached 37 364 42.40 12 486 38.75 -3.65 . 13 910 43.17 +0.77
Semi-Detached 26 675 30.27 10311 32.00 +1.75 9 161 28.43 -1.84
Terraced 21 088 23.93 8 030 24.92 +0.99 7 440 23.09 -0.84
Apartments 2 987 3.39 1395 4.33 +0.94 1 712 5.31 +1.92
Totals 88 114 100.00 32222 100.00 7.33 32223 100.00 5.37
*total error in absolute terms
Table 2. Fractal dimensions from linear regression
Dwelling Type Fractal Dimension (D) r-squared (cumulative) r-squared (density)
Detached 1.423 0.953 0.770
Semi-Detached 1.408 0.954 0.787
Terraced 1.661 0.919 0.320
Apartments 1.176 0.950 0.903
561