A Comparative Study on Satellite Image Classification Using Various Deep Learning Techniques
Abstract
The satellite image classification procedure comprises categorizing
the image pixel values. There are several approaches and procedures for classifying
satellite images. Satellite image categorization algorithms are roughly divided into
three categories: 1) automatic 2) manual and 3) hybrid. Satellite image classification
requires the selection of an appropriate classification method depending on the
criteria. This paper focuses on satellite image categorization methods and
methodologies.
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