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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >POL-SAR Image Classification Based on Modified Stacked Autoencoder Network and Data Distribution
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POL-SAR Image Classification Based on Modified Stacked Autoencoder Network and Data Distribution

机译:基于修改堆叠的AutoEncoder网络和数据分布的POL-SAR图像分类

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摘要

This article proposes a novel autoencoder (AE) network based on the distribution of polarimetric synthetic aperture radar (POL-SAR) data matrix, called a mixture autoencoder (MAE). Through a detailed analysis of the data distribution POL-SAR data matrix, a normalization method is also presented in succession. The proposed MAE defines the data error term in the loss function according to the data distribution. It can be regarded as a process of unsupervised feature extraction designed specifically for POL-SAR data matrix. Then, a softmax classifier is trained with the help of data features and the corresponding label information. Next, a stacked MAE (SMAE) network is reasonably constructed by considering the data distribution among different layers. Finally, this article also presents a classification network through discarding the decoder process of the proposed SMAE and connecting with a softmax classifier. The SMAE is trained layer by layer using the unlabeled data. The softmax classifier is also trained with a small number of labeled pixels. With parameters obtained from the above-mentioned procedures as the initial parameters, the whole classification network is trained by the labeled pixels to get a well-trained model, which is used for predicting the corresponding label of the pixel in the data set. Three real POL-SAR data sets, including the AIR-SAR L-band data of Flevoland, The Netherlands, are used in the experiments. Compared with one classical algorithm and two related models with the similar structure, both the proposed methods show improvements in overall accuracy and efficiency as well as possess better adaptability of the parameter and preferable consistency with the classification performance.
机译:本文提出了一种基于Polariemetric合成孔径雷达(POL-SAR)数据矩阵的分布的新型AutoEncoder(AE)网络,称为混合性AutoEncoder(MAE)。通过对数据分发POL-SAR数据矩阵的详细分析,归一化方法也连续呈现。该拟议的MAE根据数据分布定义了丢失功能中的数据错误项。它可以被视为专为POL-SAR数据矩阵而设计的无监督特征提取的过程。然后,在数据功能和相应的标签信息的帮助下培训Softmax分类器。接下来,通过考虑不同层之间的数据分布,可以合理地构建堆叠的MAE(SMAE)网络。最后,本文还通过丢弃所提出的SMAE的解码器处理并与SoftMax分类器连接来介绍分类网络。使用未标记的数据通过层培训SMAE。 Softmax分类器也培训,少量标记的像素。利用从上述过程获得的参数作为初始参数,通过标记的像素训练整个分类网络以获得训练有素的模型,该模型用于预测数据集中的像素的相应标签。在实验中使用了三种真正的POL-SAR数据集,包括Flevoland的Air-SAR L波段数据。与具有相似结构的一个经典算法和两个相关模型相比,所提出的方法都显示了整体精度和效率的改进,并且具有对参数的更好适应性和与分类性能的优选一致性。

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