Contextual classification of Cropcam UAV high resolution images using frequency-based approach for land use/land cover mapping case study: Penang Island

FAEZ M. HASSAN, M. Z. Mat Jafri, H. S. Lim
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引用次数: 5

Abstract

Cropcam UAV provides GPS based digital images on demand and real time data with high temporal resolution throughout the equatorial region where the sky is often covered by clouds. The images obtained by the UAV system in this research were used to overcome the problem of unclear images obtained by the satellite and manned aircraft in our study area. Conventional classification methods commonly cannot handle the complex landscape environment in the image. The result of each image has often a salt and pepper appearances which are the main characteristic of misclassification. The objective of this study is to evaluate the land use/land cover features over Penang Island using contextual classification method based on the frequency-based approach. The technique was applied to the high resolution images in three bands collected from a digital camera equipped with the platform system to extract thematic maps. Contextual classifier that utilized both spectral and spatial information could be reduce the speckle error and improve the classification performance significantly. Four classes could be classified clearly within the study area, and a high accuracy was achieved in the classification process. In order to evaluate the performance of the classifier, nine different window sizes ranging from 3 by 3 to 19 by 19 with an increment are tested. The study revealed that the frequency based-contextual classifier is effective with the images used in this research compare with the satellite images and images collected from conventional manned platforms and could be used for land use/cover mapping for the small area of coverage.
基于频率方法的Cropcam无人机高分辨率图像上下文分类用于土地利用/土地覆盖制图案例研究:槟城岛
Cropcam无人机根据需要提供基于GPS的数字图像,并在赤道地区提供高时间分辨率的实时数据,那里的天空经常被云覆盖。利用无人机系统获取的图像,克服了卫星和有人驾驶飞机在研究区域获取图像不清晰的问题。传统的分类方法通常无法处理图像中复杂的景观环境。每幅图像的结果往往具有盐和胡椒的外观,这是误分类的主要特征。本研究的目的是利用基于频率的上下文分类方法来评估槟城岛的土地利用/土地覆盖特征。将该技术应用于从配备平台系统的数码相机中采集的三个波段的高分辨率图像,以提取专题地图。同时利用光谱和空间信息的上下文分类器可以显著降低散斑误差,提高分类性能。在研究区域内可以清晰地划分出4个类别,分类过程中准确率较高。为了评估分类器的性能,测试了9种不同的窗口大小,范围从3 × 3到19 × 19,并增加了一个增量。研究表明,与卫星图像和从常规载人平台收集的图像相比,基于频率的上下文分类器在本研究中使用的图像是有效的,并且可以用于小覆盖区域的土地利用/覆盖映射。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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