A Comparative Study of Land Cover Classification by Using Multispectral and Texture Data

The main objective of this study is to find out the importance of machine vision approach for the classification of five types of land cover data such as bare land, desert rangeland, green pasture, fertile cultivated land, and Sutlej river land. A novel spectra-statistical framework is designed to c...

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Veröffentlicht in:BioMed research international 2016-01, Vol.2016 (2016), p.1-12
Hauptverfasser: Shah Muhammad, Syed, Fahad, Muhammad, Ahmad, Sarfraz, Naveed, Nasir, Aslam, Naeem, Jamil, Mutiullah, Rehmani, Ejaz Ahmad, Ahmad, Nazir, Akhtar Khan, Naeem, Razzaq, Abdul, Ul-Rehman, Muzammil, Shahid, Muhammad, Babar, Masroor Ellahi, Qadri, Syed Furqan, Ahmad, Farooq, Khan, Dost Muhammad, Qadri, Salman, Pervez, Muhammad Tariq
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Sprache:eng
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Zusammenfassung:The main objective of this study is to find out the importance of machine vision approach for the classification of five types of land cover data such as bare land, desert rangeland, green pasture, fertile cultivated land, and Sutlej river land. A novel spectra-statistical framework is designed to classify the subjective land cover data types accurately. Multispectral data of these land covers were acquired by using a handheld device named multispectral radiometer in the form of five spectral bands (blue, green, red, near infrared, and shortwave infrared) while texture data were acquired with a digital camera by the transformation of acquired images into 229 texture features for each image. The most discriminant 30 features of each image were obtained by integrating the three statistical features selection techniques such as Fisher, Probability of Error plus Average Correlation, and Mutual Information (F + PA + MI). Selected texture data clustering was verified by nonlinear discriminant analysis while linear discriminant analysis approach was applied for multispectral data. For classification, the texture and multispectral data were deployed to artificial neural network (ANN: n-class). By implementing a cross validation method (80-20), we received an accuracy of 91.332% for texture data and 96.40% for multispectral data, respectively.
ISSN:2314-6133
2314-6141
DOI:10.1155/2016/8797438