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THE APPLICATION OF NEURAL NETWORKS TO THE FLORISTIC CLASSIFICATION OF REMOTE SENSING AND GIS DATA IN COMPLEX TERRAIN

机译:神经网络在复杂地形中的遥感和GIS数据植物分类中的应用

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This study applies a Back-Propagation Neural Network to the task of floristic land cover classification. The input data consists of the three LANDSAT TM bands 2, 4 and 7 and the GIS based environmental variables Aspect, Elevation, Catchment, Geology and Slope. This dataset covers a 225 square-km sub scene centred near the town of Kioloa, South East, Australia. The study area is complex comprising a mixture of disturbed and partially cleared sclerophyll forest and rainforest on rough terrain with variable geology. Rainforest gullies and coastal heath are found along the coastal fringe thus adding to the floristic complexity confronted by the neural network. The resulting neural network classifications provide a realistic estimate of the distribution of floristic classes. The patterning is more sophisticated and less polygonal than that achieved using earlier models. The most awkward vegetation class, rainforest ecotone is handled effectively by the neural network. Misclassified pixels are allocated to either wet sclerophyll or rainforest.
机译:本研究将反向传播神经网络应用于植物覆盖分类的任务。输入数据包括三个Landsat TM频段2,4和7以及基于GIS的环境变量方面,高程,集水区,地质和斜率。该数据集涵盖了一个225平方公里的子场景,位于澳大利亚东南部的Kioloa镇附近。该研究区域复杂,包含受干扰和部分清除的硬化的硬化的硬化森林和雨林在具有可变地质的粗糙地形上的混合物。沿着沿海边缘发现雨林沟渠和沿海荒地,从而增加了神经网络面对的植物复杂性。由此产生的神经网络分类提供了对植物类别分布的现实估计。图案化比使用早期型号实现更复杂和更少的多边形。最尴尬的植被阶级,雨林Ecotone由神经网络有效处理。将错误分类的像素分配给湿式硬粒或雨林。

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