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Semi-Supervised PolSAR Image Classification Based on Self-Training and Superpixels

机译:基于自训练和超像素的半监督PolSAR图像分类

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Polarimetric synthetic aperture radar (PolSAR) image classification is a recent technology with great practical value in the field of remote sensing. However, due to the time-consuming and labor-intensive data collection, there are few labeled datasets available. Furthermore, most available state-of-the-art classification methods heavily suffer from the speckle noise. To solve these problems, in this paper, a novel semi-supervised algorithm based on self-training and superpixels is proposed. First, the Pauli-RGB image is over-segmented into superpixels to obtain a large number of homogeneous areas. Then, features that can mitigate the effects of the speckle noise are obtained using spatial weighting in the same superpixel. Next, the training set is expanded iteratively utilizing a semi-supervised unlabeled sample selection strategy that elaborately makes use of spatial relations provided by superpixels. In addition, a stacked sparse auto-encoder is self-trained using the expanded training set to obtain classification results. Experiments on two typical PolSAR datasets verified its capability of suppressing the speckle noise and showed excellent classification performance with limited labeled data.
机译:极化合成孔径雷达(PolSAR)图像分类是一种新兴技术,在遥感领域具有很大的实用价值。但是,由于费时费力的数据收集,几乎没有可用的标记数据集。此外,大多数可用的最新分类方法严重受到斑点噪声的影响。为了解决这些问题,本文提出了一种基于自训练和超像素的新型半监督算法。首先,将Pauli-RGB图像过度分割为超像素以获得大量的均匀区域。然后,在同一超像素中使用空间权重获得可以减轻斑点噪声影响的特征。接下来,使用半监督的未标记样本选择策略迭代地扩展训练集,该策略精心利用了超像素提供的空间关系。另外,使用扩展的训练集对堆叠的稀疏自动编码器进行自训练,以获得分类结果。在两个典型的PolSAR数据集上进行的实验证明了其抑制斑点噪声的能力,并在有限的标记数据下显示了出色的分类性能。

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