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SAR image classification using a neural classifier based on Fisher criterion

机译:基于Fisher准则的神经分类器SAR图像分类

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A supervised neural classifier based on Fisher criterion is implemented to classify two regions in a real speckled SAR image. Regions around pre-classified pixels are presented to train the neural network that learns a sub-optimal set of masks via back-propagation algorithm. Classification performance is evaluated by using the ground truth. Results with higher than 90% of correct classification are obtained. The results are also compared with a statistical classifier based on Kullback-Liebler distance via the Kappa coefficient.
机译:实现了基于Fisher准则的监督神经分类器,对真实斑点SAR图像中的两个区域进行分类。呈现预分类像素周围的区域以训练神经网络,该神经网络通过反向传播算法学习次优的蒙版集。通过使用基本事实评估分类性能。获得了正确分类率超过90%的结果。还通过Kappa系数将结果与基于Kullback-Liebler距离的统计分类器进行比较。

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