中分辨率卫星遥感影像土地利用图分类集成方法

A. Ali̇yu, E. A. Akomolafe, A. Bala, T. Youngu, H. Musa, Swafiyudeen Bawa
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引用次数: 1

摘要

有几种不同分辨率的遥感图像可用。因此,存在几种分类技术,大致分为基于像素和基于对象的分类方法。在此基础上,本研究提供了一种从粗糙卫星图像中提取土地利用的综合方法。土地用途的位置坐标是用手持式全球定位系统(GPS)仪器作为主要数据获取的。该研究将图像定量地(基于像素)分为没有混合像素的建筑、水、河岸、耕地和荒地覆盖类,然后定性地分为教育、商业、卫生、住宅和安全土地利用类,这些土地利用类由于光谱相似性而相互冲突。基于像元的土地覆盖分类的总精度和kappa系数分别为92.5%和94%。结果表明:居住用地面积为5500.01ha,教育用地面积为2800.69ha;安全(411.27公顷);卫生(133.88公顷);和商业(109.01公顷)。该方法与基于对象的图像分类方法相似,具有清晰的外观。它消除了传统的基于像素的分类所具有的“盐和胡椒”的外观。输出可以是矢量模型或栅格模型,这取决于创建它的目的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrated Method for Classifying Medium Resolution Satellite Remotely Sensed Imagery into Land Use Map
There are several remotely sensed images of varied resolutions available. As a result, several classification techniques exist, which are roughly classified as pixel-based and object-based classification methods. Based on the foregoing, this study provided an integrated method of deriving land use from a coarse satellite image. Location coordinates of the land uses were acquired with a handheld Global Positioning System (GPS) instrument as primary data. The study classified the image quantitatively (pixel-based) into built-up, water, riparian, cultivated, and uncultivated land cover classes with no mixed pixels, and then qualitatively into educational, commercial, health, residential, and security land use classes that were conflicting due to spectral similarity. The total accuracy and kappa coefficient of the pixel-based land cover classification were 92.5% and 94% respectively. The results showed that residential land use occupied an area of 5500.01ha, followed by educational (2800.69ha); security (411.27ha); health (133.88ha); and commercial (109.01ha) respectively. The integrated method produces a crisp-appearance like the object-based image classification method. It eliminates the "salt and pepper" appearance that a traditional pixel-based classification would have. The output can be a vector or raster model depending on the purpose for which it is created.
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