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A preliminary study of three training methods for land cover classification by artificial neural networks

机译:三种人工神经网络土地覆盖分类训练方法的初步研究。

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This paper reports our preliminary study that aims to examine the effectiveness of training methods for land cover classification by artificial neural networks. We consider three training methods, namely, the gradient descent method, the conjugate gradient method, and the Quasi-Newton method. We apply these methods to derive land cover information from a Landsat Enhanced Thematic Mapper Plus (ETM+) scene covering a urban area. Our initial experiment results suggest training methods can affect the overall efficiency of neural networks in terms of land cover classification accuracy.
机译:本文报告了我们的初步研究,旨在检验通过人工神经网络进行土地覆盖分类训练方法的有效性。我们考虑三种训练方法,即梯度下降法,共轭梯度法和拟牛顿法。我们应用这些方法从涵盖城市区域的Landsat增强主题地图制作工具(ETM +)场景中获取土地覆盖信息。我们的初步实验结果表明,训练方法可以在土地覆盖分类精度方面影响神经网络的整体效率。

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