基于噪声模型和神经网络的雷达杂波分类

C. Oliver, R. White
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引用次数: 8

摘要

讨论了合成孔径雷达(SAR)相干图像中杂波纹理的分类问题。该过程的第一步是将观察到的纹理分割成不同纹理属性的区域。为了选择分割区域,必须利用纹理属性的一些信息。封装这些信息的一种方法是以先验已知的模型的形式存在的。另一种方法是通过大量遇到的纹理类型的例子来训练分割方法。后一种方法是使用非承诺神经网络的基础。这些方法的比较揭示了神经网络能够提取纹理中包含的所有信息的程度,这些信息在基于模型的方法中被自动利用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Radar clutter classification based on noise models and neural networks
The problem of the classification of clutter textures in coherent images, e.g. synthetic aperture radar (SAR), is discussed. The first stage in such a process is to segment the observed texture into regions of differing texture properties. In order to select the segmentation regions one must exploit some information about the properties of the texture. One method for encapsulating this information is in the form of a model which is known a priori. Another approach is to train a segmentation method by large numbers of examples of the types of texture encountered. This latter approach underlies the use of noncommittal neural networks. A comparison of these approaches reveals the extent to which a neural network is capable of extracting all the information contained within the texture which is automatically exploited in the model-based approach.<>
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