Artificial neural network approach for vegetation classification from synthetic aperture radar images

K. Venkataraman, C.S. Lee
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Abstract

This paper deals with the utilisation of artificial neural network to classify vegetation from highly nonlinear time varying backscatter parameters from the canopies and plants. The paper describes the backscatter phenomenon and their relevance with various types of plants and their constituents. An attempt is made to simulate and train an artificial NN package with the backscattering power experimentally obtained for two classes of vegetation, viz walnut orchard and coniferous forest, for a back propagation algorithm. The paper discusses the results achieved which is fairly accurate with reasonable elapsed time for the training. Further analysis of the simulated packages using Migraines software is underway.<>
基于人工神经网络的合成孔径雷达图像植被分类
本文研究了利用人工神经网络从树冠和植物的高度非线性时变后向散射参数中对植被进行分类。本文介绍了后向散射现象及其与各类植物及其成分的关系。利用实验得到的核桃园和针叶林两类植被的后向散射功率,对人工神经网络包进行了反向传播算法的模拟和训练。本文讨论了在合理的训练时间内获得的相当准确的结果。使用Migraines软件对模拟包的进一步分析正在进行中。
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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