Focal-Test-Based Spatial Decision Tree

This chapter introduces another spatial classification technique called focal-test-based spatial decision tree (FTSDT), in which the tree traversal direction of a sample is based on both local information and focal (neighborhood) information. We also provide comparisons of FTSDT with existing decision trees and spatial decision trees on real-world wetland mapping data.

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