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SAR image classification using adaptive neighborhood-based convolutional neural network

机译:基于自适应邻域的卷积神经网络的SAR图像分类

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摘要

The convolutional neural network (CNN)-based pixel-wise synthetic aperture radar (SAR) data classification does not take fully use the spatial neighborhood information due to the fact that the impact of neighborhood pixels is not taken into consideration. The flaw of CNN-based classification method may lead to misclassification under some conditions. In this paper, we propose a novel adaptive neighborhood-based convolutional neural network (AN-CNN) for the single polarimetric synthetic aperture radar data classification. In the convolution layer, the neighborhood pixels are adaptively weighted based on their bilateral distance (spatial and feature distance) to the central pixel. In this way, different pixels have different impact on the classification result of the central pixel. The spatial distance-based weighting can reduce the misclassifications in the homogenous regions which are caused by speckle noise and the feature distance-based weighting is beneficial for the classification in the boundary regions. As a result, the misclassification is obviously reduced by the proposed AN-CNN which has a new cost function. Experimental results on simulated and real SAR data show that our proposed AN-CNN can notably improve the classification accuracy in both boundary regions and homogeneous regions compared with conventional CNN in different scenes especially when limited training samples are explored.
机译:基于圆形像素 - 明智的孔径雷达(SAR)数据分类的卷积神经网络(CNN)由于不考虑邻域像素的影响而完全使用空间邻域信息。基于CNN的分类方法的缺陷可能导致某些条件下的错误分类。在本文中,我们提出了一种用于单极性合成孔径雷达数据分类的新型自适应邻域的卷积神经网络(AN-CNN)。在卷积层中,基于它们的双边距离(空间和特征距离)到中心像素的双边距离(空间和特征距离)自适应地加权。以这种方式,不同的像素对中心像素的分类结果产生不同的影响。空间距离的加权可以减少由散斑噪声引起的均匀区域中的错误分类,并且基于特征距离的权重有利于边界区域的分类。因此,通过具有新的成本函数的提议的AN-CNN明显减少了错误分类。模拟和真实SAR数据的实验结果表明,与不同场景中的传统CNN相比,我们所提出的AN-CNN可以显着提高边界区和均匀区域的分类精度,特别是当探索有限的训练样本时。

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