Author/Authors :
Salimi، Amir نويسنده Faculty of Mining, Petroleum and Geophysics, Shahrood University of Technology, Shahrood, Iran Salimi, Amir , Ziaii، Mansour نويسنده Assistant Professor of Geochemistry, Faculty of Mining, Petroleum and Geophysics, Shahrood University, Shahrood, Iran Ziaii, Mansour , Hosseinjani Zadeh، Mahdieh نويسنده Department of Ecology, Institute of Science and High Technology and Environmental Science, Graduate University of Advanced Technology, Kerman, Iran Hosseinjani Zadeh, Mahdieh , Amiri، Ali نويسنده Computer Engineering Group, Faculty of Engineering, Zanjan University, Zanjan, Iran Amiri, Ali , Karimpouli، Sadegh نويسنده Mining Engineering Group, Faculty of Engineering, Zanjan University, Zanjan, Iran Karimpouli, Sadegh
Abstract :
To prospect mineral deposits at regional scale, recognition and classification of hydrothermal
alteration zones using remote sensing data is a popular strategy. Due to the large number of spectral
bands, classification of the hyperspectral data may be negatively affected by the Hughes phenomenon.
A practical way to handle the Hughes problem is preparing a lot of training samples until the size of
the training set is adequate and comparable with the number of the spectral bands. In order to gather
adequate ground truth instances as training samples, a time-consuming and costly ground survey
operation is needed. In this situation that preparing enough field samples is not an easy task, using an
appropriate classifier which can properly work with a limited training dataset is highly desirable.
A mong the supervised classification methods, the Support Vector Machine is known as a promising
classifier that can produce acceptable results even with limited training data. Here, this capability is
evaluated when the SVM is used to classify the alteration zones of Darrehzar district. For this purpose,
only 12 sampled instances from the study area are utilized to classify Hyperion hyperspectral data with
165 useable spectral bands. Results demonstrate that if parameters of the SVM, namely C and ?, are
accurately adjusted, the SVM can be successfully used to identify alteration zones when field data
samples are not available enough.