首页> 外文会议>Geoscience and Remote Sensing Symposium Proceedings, 1998. IGARSS '98. 1998 IEEE International >Application of supervised neural network approaches to remotely sensed optical imagery
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Application of supervised neural network approaches to remotely sensed optical imagery

机译:监督神经网络方法在遥感光学影像中的应用

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This paper presents a new method based on the application of modular neural networks to agricultural land use classification and compares the advantages and disadvantages over a single complex neural network approach. Neural networks (NN) have been found to have good generalisation properties and their use is becoming increasingly prevalent in the field of remote sensing. However, there are a number of remote sensing problems where neural networks do not necessarily provide an optimum solution, these include mixed pixel analysis, subclass characterisation and parameter extraction for use in biophysical models. Typically the application of NN techniques to remote sensing involves using one NN to classify a large number of land-cover classes. The authors have previously found this approach to be inefficient and inaccurate, a modular approach is therefore implemented which is more flexible. This paper applies these techniques to optical imagery. The area used for this work is a research farm in Bavaria, Germany, which comprises of a highly dynamic terrain with small field units. High resolution land-use maps and yield data have been produced for the research farm, using GPS equipment attached to crop harvesters. These maps enable accurate selection of test classes and are used to validate the results produced by the various techniques.
机译:本文提出了一种基于模块化神经网络在农业土地利用分类中的应用的新方法,并比较了单一复杂神经网络方法的优缺点。已经发现神经网络(NN)具有良好的泛化特性,并且在遥感领域中,它们的使用正变得越来越普遍。但是,存在许多遥感问题,其中神经网络不一定能提供最佳解决方案,其中包括混合像素分析,子类表征和用于生物物理模型的参数提取。通常,NN技术在遥感中的应用涉及使用一个NN对大量土地覆盖类别进行分类。作者先前已经发现这种方法效率低下并且不准确,因此实施了一种更加灵活的模块化方法。本文将这些技术应用于光学成像。用于这项工作的区域是德国巴伐利亚州的一个研究农场,该农场由高动态地形和小型野外单位组成。利用与农作物收割机相连的GPS设备,为研究农场绘制了高分辨率的土地利用图和产量数据。这些图可以准确选择测试类别,并用于验证各种技术产生的结果。

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