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open Graph Image
photo
open Graph Image
photo
is In Organization
Yes
is In Organization
Yes
description
The project aims at explaining the usage of SAM algorithm for satellite image classification. Hyperspectral Image provides pixel spectrum that fetches detailed information about a surface to identify and distinguish between spectrally similar (but unique) materials. The Hyperspectral Image sensor placed on board the Remote Sensing Satellite captures Hyperspectral Images with various bands of spectrum. Experiments are carried out for the implementation of Spectral Angle Mapper (SAM) on Hyper- spectral Images for classification of pixels on the surface. The false color composite of the image is also obtained for better visualization of surface differences. The Hyperspectral Images of various bands are stacked one after the other to form three-dimensional Cube of images for SAM implementation. SAM is a supervised classification algorithm which identifies the various classes in the image based on the calculation of the spectral angle. The spectral angle is calculated between the test vector built for each pixel and the reference vector built for each reference classes selected by the user. Results are obtained to read and reorganize multiple 2-D datasets into a single compact 3D dataset cube. The reference vector is built for performing SAM classification and the angle between the reference vector and pixel vector is calculated to compare with the determined threshold angle value. The color coding is then applied to distinguish between the various classes that have been recognized by the SAM algorithm. Hence using SAM, Hyperspectral images are analyzed to extract thematic information such as land-cover, water bodies, and clouds.
description
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homepage
homepage
https://fastlane.tools
url
https://githubhelp/grseb9s/sam-classification-of-satellite-images
url
https://githubhelp/fastlane/fastlane
disk Usage
128
dis kUsage
81609
stargazer Count
0
stargazer Count
38785
forkCount
0
forkCount
5634
watcher Count
1
watcher Count
739
created At
2017-12-13
created At
2014-12-03
license Info
license Info
MIT License
issues
0
issues
50
languages
0
languages
9
repository Topics
0
repository Topics
10
owner
grseb9s
owner
fastlane
owner Avatar
photo
owner Avatar
photo
other
other

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