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Lab 6: Idrisi Advanced Classifiers
This lab provided an introduction to the capabilities of Idrisi software package in terms of advanced classification schemes. The various exercises performed include the following topics:
1. Bayes’ Theorem and Maximum Likelihood Classification 2. Soft Classifiers I: Bayclass Soft Classifier 3. Hardeners 4. Soft Classifiers II: Dempster-Shafer Soft Classifier and BELCLASS 5. Dempster-Shafer and Classification Uncertainty
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Figure 1: Exercise 5-1 MaxLike Classification
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Figure 2: Exercise 5-2 Segmentation Classification
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Figure 3: Exercise 5-3 BAYCLASS Method Conifer vs Deciduous Classification
Figure 4: Ex 5-3 Bayclass Uncertainty
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Average values extracted from BAYCLU based on SPMAXLIKE-EQUAL
Category Average Legend 1 0.343203 oldres 2 0.282645 newres 3 0.066097 ind-com 4 0.336280 roads 5 0.000002 water 6 0.294644 ag-pas
7 0.189668 decidous 8 0.149133 wetland 9 0.219302 golf-grass 10 0.301683 conifer 11 0.004251 shallow
Table 1: Exercise 5-3 Bayclass uncertainty by class
Figure 5: Exercise 5-3 Avg Bayclu Values based on spmaxlike-equal
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Figure 8: Exercise 5-5 Comparison of bayclass and belclass uncertainty
Figure 9: Comparison of deciduous results (bel vs bayclass)