基于自适应共振理论的土地覆被分类——2

B. Sowmya, A. Thirumaran, R. Aravindh, Avr. Adhithiya Prasad
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引用次数: 0

摘要

本文描述了利用自适应共振理论2 (ART 2)进行土地覆盖分类的任务。自适应共振理论2已被用于分割卫星图像。图像分割是指将像素划分为同质类,使同一类中的项目尽可能相似,而不同类中的像素尽可能不相似。分割的最基本属性是单色图像的图像强度和彩色图像的颜色分量。由于在任何给定的图像中都有超过1600万种颜色可用,并且很难对图像的所有颜色进行分析,因此通过图像分割将可能的颜色分组在一起ART 2已用于图像分割。找到每个像素的RGB值。根据光谱值,ART 2将像元分为城区、裸土区、森林植被区和水域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Land cover classification using Adaptive Resonance Theory-2
This paper describes the task of land cover classification using Adaptive Resonance Theory 2 (ART 2). Adaptive resonance theory 2 has been used to segment the satellite image. Image segmentation refers to the partition of pixels into homogeneous classes so that items in the same class are as similar as possible and pixels in different classes are as dissimilar as possible. The most basic attribute for segmentation is image intensity for a monochrome image and color components for a color image. Since there are more than 16 million colors available in any given image and it is difficult to analyze the image on all of its colors, the likely colors are grouped together by image segmentation ART 2 has been used for image segmentation. The RGB values of each pixel are found. Depending on the spectral value, the pixels are classified as urban area, bare soil, forest & vegetation and water regions by ART 2.
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