ACRS2015_6.pdf
ABSTRACT: In recent years, the processing and analysis of hyperspectral images have become the main tasks of many researchers dealing with RS image processing. Unlike the traditional multispectral datasets taken in the optical range of electro-magnetic spectrum, the hyperspectral data deals with an enormous amount of bands and the data are formed as collections of hundreds of images of the same scene with each image corresponding to a narrow interval of the electro-magnetic wavelength. It is clear that such datasets offer the superior potential for more accurate and detailed information extraction than is possible with other types of RS data. The purpose of this paper is to classify landcover using hyperspectral images. For the feature extraction, principal average of visible, near infrared and mid infrared bands, assorting of high correlation bands and component transformation (PCA) have been applied. Advanced satellite images classification represents an accurate and cost effective for land cover mapping at regional scale. The output of each of the feature extraction method is classified using a maximum likelihood classification method. The results are analyzed and compared.
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Additional Information
Field | Value |
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Data last updated | September 26, 2018 |
Metadata last updated | September 26, 2018 |
Created | September 26, 2018 |
Format | application/pdf |
License | Бусад (Арилжааны бус) |
created | over 6 years ago |
format | |
id | 23bbc1f2-041c-4cff-b10d-424e9f5e0090 |
last modified | over 6 years ago |
mimetype | application/pdf |
on same domain | True |
package id | 4d690ebc-f05c-4c10-ba03-e0f68b8a8641 |
revision id | 3b9a5b93-68c7-4b24-9749-450da84db231 |
size | 492.6 KiB |
state | active |
url type | upload |