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Using EO1 Hyperspectral images for Geological units mapping | ||
Journal of Radar and Optical Remote Sensing and GIS | ||
مقاله 5، دوره 2، شماره 3.4، اسفند 2019، صفحه 63-78 اصل مقاله (778.76 K) | ||
نویسندگان | ||
Ali Asghar Torahi* 1؛ Hasan Hasani Moghaddam2؛ parisa Safarbeyranvand3؛ Parviz Ziaeian Firoozabad4؛ Ali Hosingholizade5 | ||
1Assistant Professor Remote Sensing and GIS, Kharazmi University of Tehran | ||
2Master of Remote Sensing and GIS ,Kharazmi University of Tehran. | ||
3Master of Remote Sensing and GIS ,Kharazmi University of Tehran | ||
4Associate Professor of Remote Sensing and GIS, Kharazmi University of Tehran | ||
5PhD Student of Remote Sensing and GIS, University Tehran | ||
چکیده | ||
The issue of mapping geological units during an evolving process has now reached a point where the detection and classification of geological units is carried out with the aid of hyperspectral sensing. In this study, using hyperspectral image of Hyperion sensor, related to Khorramabad area in Lorestan province, and using Spectral Angle Mapper (SAM) and SVM (Support Vectors Machine) algorithms for detecting and separating geological units After performing the necessary preprocesses, the MNF conversion and PPI algorithm were used to reduce data and extract pure pixels on the image, respectively. From overlapping of pure pixels with geological units and ground data, the average range for Each member was extracted and then these net members are used as inputs for the above mentioned algorithms and class B DVD image was done. Field surveys performed at the points provided by the Spectral Angle Mapter (SVM) confirm the superiority of the SVM method in separating geological units. Finally, by verifying the accuracy of the algorithms by calculating the error matrix, the accuracy of the classification of each method is respectively For SAM (68.83) and SVM (81.70), it was found that at the end of the SVM algorithm with a total accuracy of 81.70 was introduced as the best classification algorithm. | ||
کلیدواژهها | ||
Hyperspectral Images؛ Geological Plot Map؛ Pure Members؛ SAM؛ SVM | ||
آمار تعداد مشاهده مقاله: 247 تعداد دریافت فایل اصل مقاله: 245 |