首页> 外文会议>International Symposium on Neural Networks pt.1; 20040819-20040821; Dalian; CN >Some Experiments with Ensembles of Neural Networks for Classification of Hyperspectral Images
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Some Experiments with Ensembles of Neural Networks for Classification of Hyperspectral Images

机译:神经网络集成的高光谱图像分类实验

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A hyperspectral image is used in remote sensing to identify different type of coverts on the Earth surface. It is composed of pixels and each pixel consist of spectral bands of the electromagnetic reflected spectrum. Neural networks and ensemble techniques have been applied to remote sensing images with a low number of spectral band per pixel (less than 20). In this paper we apply different ensemble methods of Multilayer Feedforward networks to images of 224 spectral bands per pixel, where the classification problem is clearly different. We conclude that in general there is an improvement by the use of an ensemble. For databases with low number of classes and pixels the improvement is lower and similar for all ensemble methods. However, for databases with a high number of classes and pixels the improvement depends strongly on the ensemble method.
机译:高光谱图像用于遥感以识别地球表面上不同类型的隐蔽性。它由像素组成,每个像素由电磁反射光谱的光谱带组成。神经网络和集成技术已被应用于遥感图像,每个像素的光谱带数量少(小于20)。在本文中,我们将不同的多层前馈网络集成方法应用于每像素224个光谱带的图像,其中分类问题明显不同。我们得出的结论是,总体而言,通过使用合奏会有所改善。对于具有较少类和像素的数据库,改进是较低的,并且对于所有集成方法而言都是相似的。但是,对于具有大量类和像素的数据库,改进很大程度上取决于集成方法。

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