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Applying Neural Networks In Rare Vegetation Communities Classification Of Remotely Sensed Images

机译:神经网络在稀疏植被群落遥感图像分类中的应用

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Artificial neural networks (ANNs) are used for rare vegetation communities' classification using remotely sensed data. Training of a neural network requires that the user specifies the network structure and sets the learning parameters. Heuristics proposed by a number of researchers to determine the optimum values of network parameters are compared using datasets. Training and test samples were collected for each class type (12 classes). After preliminary statistical tests for training samples, two modification algorithms of the classification scheme were defined: the first one led to creating a scheme which consisted of 7 classes, and the second one led us to creating of 5 class's scheme. Testing results show that the use of ANNs on the based of 5 class's scheme can produce higher classification accuracies than either alternative. The visual analysis of the results of the classification is described using Geo-information Technologies in details.
机译:人工神经网络(ANN)用于使用遥感数据对稀有植被群落进行分类。训练神经网络需要用户指定网络结构并设置学习参数。使用数据集比较了许多研究人员提出的用于确定网络参数最佳值的启发式方法。针对每个班级类型(12个班级)收集培训和测试样本。在对训练样本进行初步统计测试之后,定义了两种分类方案的修改算法:第一个导致创建一个由7个类别组成的方案,第二个导致我们创建5个类别的方案。测试结果表明,基于5类方案的ANN的使用比任何一种方法都能产生更高的分类精度。使用地理信息技术详细描述了分类结果的视觉分析。

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