基于自组织神经网络的aster数据分类研究

Ma Jianwen Li Qiqing Hasi Bagan
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引用次数: 4

摘要

传统的遥感数据分类方法大多采用正态分布模型,而神经网络不需要统计模型的假设。在遥感数据分类中发现了越来越多的神经网络应用实例。本文提出了一种基于聚类分析的Kohonen自组织特征映射方法。ASTER数据是一种新型遥感数据,包括3个15 m分辨率波段和3个30m分辨率波段。我们的研究选择了北京市的ASTER数据。本文给出了用神经网络方法对数据进行小波融合后的土地覆盖分类结果。该分类比MLH分类准确率高9%。神经网络的概念来源于人类大脑功能的基本结构。在现代科学和工程领域,神经网络的重要性日益增强,在模式识别、分类等领域得到了广泛的应用。根据要执行的任务,有k种不同类型的神经网络可用。本研究采用Kohonen自组织网络。Kohonen自组织网络结构的导入层有6个音符,ASTER数据带1、2、3N、5、7、9对应于导入层的一个音符。输出层具有25×25神经音符的结构。学习速度α起始值为0.9,α降至0.001后停止净计算处理。最大循环时间为2 500。ASTER是唯一在EOS AM-1板上飞行的仪器,将获得高分辨率图像。ASTER任务的主要目标是获得地球表面目标区域15个通道的高分辨率图像数据,以及黑白立体图像,重访时间在4到16天之间。波段1、2为可见波段,波段3N、3B为近推断波段,分辨率为15 m;4 ~ 9波段为一组短波推断波段,分辨率为30 m;10~14波段为热波段,分辨率为90m。利用ASTER的优点,地球科学家可以解决广泛的全球变化问题。本文介绍了Kohonen自组织网络在2001年利用ASTER数据进行北京地区土地覆被分类中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
STUDY ON ASTER DATA CLASSIFICATION USING SELF-ORGANIZING NEURAL NETWORK METHOD
The assumption of statistical model is not needed for Neura l Networks (NN) while most traditional classification method for remote sensing data assumed normal distribution model. More and more NN application cases have been found in remote sensing data classification. In this paper, we proposed a method of Kohonen Self- organizing feature map based on clustering analysis. ASTER data is a new remote sensing data, which includes 3 bands of 15 m resolution an d 3 bands of 30m resolution. ASTER data of Beijing have been chosen for our research. The land cover classification result in neural networks method has been shown in this paper after wavelet fusion of data. The classification has 9% of accuracy ratio more than MLH classification.The idea of neural networks came from the basic structure of functioning of the human brain. In the modern field of science and engineering, the neural networks have strengthened their importance with numerous applications ranging from pattern recognition, fields of classification etc. There are different k inds of the neural networks available depending on the task to be performed. In this study the Kohonen self-organized network is used. There are 6 notes in import layer of t he structure of Kohonen self-organized network and ASTER data bands 1,2,3N,5,7,9 corresponding to one note in import layer. Output layer has the structure of 25×25 neural notes. Learning speed α starting value is 0.9, α reduced to 0.001 stopped with net calculation processing. Maximum circulation time is 2 500. ASTER is the only instrument to fly on the EOS AM-1 plate form that will acquire high-resolution image. The primary goal of the ASTER mission is to obtain high-resolution image data in 15 channels over targeted areas of the Earth's surface, as well as black-and-white stereo images, with a revisit time between 4 and 16 days. Band 1、2 are visible bands, band 3N,3B are near inferred bands, the resolution is 15 m; Band from 4 to 9 are group of short wave inferred bands, th e resolution is 30 m; Band from 10~14 are thermal bands, the resolution is 90m. W ith ASTER's merits earth scientists to address a wide range of globule-change topics. In the paper we introduce Kohonen self-organized network in classification of land cover in Beijing area in 2001 by using ASTER data.
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