The development characteristics of remote sensing classification technology in the Study of vegetation classification
Abstract
Summary Remote Sensing technology evolving , The applies to vegetation classification studies with the
following features : one , Remote sensing data from low-resolution to high resolution ; second , data from the single
time Single-source remote sensing classification to multi-phase , Multi-source information fusion
development ; Third ,category The method develops from a single classification method to a composite
taxonomy ; Fourth , from based on meta category to object-oriented classification direction .
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