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Library Satellite Data Classification Using Open Source Support

Satellite Data Classification Using Open Source Support

Satellite Data Classification Using Open Source Support

Resource information

Date of publication
December 2013
Resource Language
ISBN / Resource ID
AGRIS:US201600069135
Pages
523-530

In this study we explored the potential of open source data mining software support to classify freely available Landsat image. The study identified several major classes that can be distinguished using Landsat data of 30 m spatial resolution. Decision tree classification (DTC) using Waikato environment for knowledge analysis (WEKA), open source software is used to prepare land use land cover (LULC) map and the result is compared with supervised (maximum likelihood classifier – MLC) and unsupervised (Iterative self-organizing data analysis technique - ISODATA clustering) classification techniques. The accuracy assessment indicates highest accuracy of the map prepared using DTC with overall accuracy (OA) 92 % (kappa = 0.90) followed by MLC with OA 88 % (kappa = 0.84) and ISODATA OA 76 % (kappa = 0.69). Results indicate that data set with a good definition of training sites can produce LULC map having good overall accuracy using decision tree. The paper demonstrates utility of open source system for information extraction and importance of DTC algorithm.

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Authors and Publishers

Author(s), editor(s), contributor(s)

Biswal, S.
Ghosh, A.
Sharma, R.
Joshi, P. K.

Publisher(s)
Data Provider