Classification of remotely sensed imagery using adjacent features based approach

M. Bai, Huiping Liu, Wenli Huang, Yu Qiao, Xiaodong Mu
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引用次数: 1

Abstract

The land cover types in urban fringe areas are relatively complex so as to improve the classification accuracy difficultly. This article analyzes the distribution characteristic in feature space of the pixels with a local window from satellite image on a part of SPOT from an urban fringe area in Beijing. There are two methods with different input parameters of using artificial neural networks to describe this distribution characteristic: the input parameters are made up of the spectral information of the pixels in a 3×3 window; the input parameters are made up of the spectral information of the center pixel and the statistical distance of the pixels in a 3×3 window. After comparison classification results based on the method using adjacent feature, the first method is better than the second method on overall accuracy and kappa coefficient. However, the performance of the first method is lower than The second method in capability of habitation and minimal land objects detection.
基于相邻特征的遥感影像分类方法
城市边缘区土地覆盖类型较为复杂,难以提高分类精度。本文分析了北京某城市边缘地区部分SPOT卫星图像的局部窗口像元在特征空间上的分布特征。利用人工神经网络描述这种分布特征有两种不同输入参数的方法:输入参数由3×3窗口中像素的光谱信息组成;输入参数由中心像素的光谱信息和3×3窗口中像素的统计距离组成。对比基于相邻特征方法的分类结果,第一种方法在总体准确率和kappa系数上优于第二种方法。然而,第一种方法在居住能力和最小地物检测能力方面低于第二种方法。
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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