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Detect the Edges in Satellite Image Using CED Algorithm

N. Siranjeevi, BM Alaudeen

Abstract


Edge detection is that the name for a collection of mathematical strategies that aim at distinguishing points in a very digital image at that the image brightness changes sharply or, a lot of formally, has discontinuities. The points at that image brightness changes sharply square measure generally organized into a collection of flexuous line segments termed edges. Constant drawback of finding discontinuities in 1D signal is understood as step and also the drawback of finding signal discontinuities over time is understood as modification detection. Edge detection could be a elementary tool in image process, machine vision and pc vision, notably within the areas of feature detection and have extraction [1].

Cite this Article
Siranjeevi N, Alaudeen BM. Detect the edges in satellite image using ced algorithm. Research & Reviews: Discrete Mathematical Structures. 2015; 2(3): 30–35p. 


Keywords


Edges, satellite image, canny edge detection method, canny–deriche detector

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References


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