A STUDY ON SATELLITE IMAGE CLASSIFICATION

Authors

  • Sindhu Department of Computer Science, Saintgits College of Engineering (Autonomous), Kottayam, Pathamuttom, Kerala, India. Author
  • M J Siva Shankar Ganesh Department of Computer Science, Saintgits College of Engineering (Autonomous), Kottayam, Pathamuttom, Kerala, India Author

Keywords:

Segmentation, SVM, Remote Sensing

Abstract

One of the core reasons for the advancement in communication field is remote sensing and its related applications. Remote sensing helps to acquire information about any entity from a remote location using satellites. These satellite images have great importance in many fields like agriculture, defense, medical, transportation and so on. The classification of such images helps to identify and extract information about a particular entity. This study emphasize on analyzing different satellite image classification algorithms based on their efficiencies.

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Published

2016-05-19

How to Cite

Sindhu, & M J Siva Shankar Ganesh. (2016). A STUDY ON SATELLITE IMAGE CLASSIFICATION. INTERNATIONAL JOURNAL OF RESEARCH IN COMPUTER APPLICATIONS AND INFORMATION TECHNOLOGY (IJRCAIT), 4(3), 44-47. https://ijrcait.com/index.php/home/article/view/IJRCAIT_04_03_008