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Automated feature selection for MLP networks in SAR image classification

机译:SAR图像分类中MLP网络的自动特征选择

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In object recognition using neural networks the correct selection of features is essential for achieving successful generalization of a net as well as satisfying time performance during the training and recognition phase. This paper shows the possibilities of automatically supporting this task in two steps. In the first step, a given feature set is examined with respect to its class separating capabilities. In the second step, the feature set is stripped of redundancies using the input pruning method introduced by Belue and Bauer (1995), which is applied to trained networks. Furthermore we show possibilities of extending these feature selection techniques by making use of context features, thus going beyond the scope of feature selection techniques known so far that only rank the features of the object to be classified. The application area we selected, is the pixel based object classification of SAR (synthetic aperture radar) images, where we use at present statistical features of the first and second order and some other texture describing features. The investigations are sponsored by Daimler Benz Aerospace, Dornier, who also placed the SAR image material at our disposal.
机译:在使用神经网络的物体识别中,正确选择特征对于实现网络的成功概括并满足训练和识别阶段的时间性能至关重要。本文显示了在两个步骤中自动支持此任务的可能性。在第一步中,针对其类分离能力检查给定的特征集。在第二步中,使用贝鲁和鲍尔(1995)引入的输入修剪方法剥离了特征集,该方法应用于培训的网络。此外,我们通过利用上下文特征来展示扩展这些特征选择技术的可能性,从而超出到目前为止已知的特征选择技术的范围,只能对要分类的对象的特征进行排名。我们选择的应用程序区域,是SAR的基于像素对象分类(合成孔径雷达)图像,其中我们在第一和第二顺序和其他一些纹理描述特征的本统计特征使用。该调查由Daimler Benz Aeropace,Dornier赞助,他也将SAR Image Materials放置在我们的处置。

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