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Domain Adaptation for Remote Sensing Image Classification: A Low-Rank Reconstruction and Instance Weighting Label Propagation Inspired Algorithm

机译:遥感图像分类的域自适应:一种低秩重建和实例加权标签传播启发算法

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摘要

This paper presents a framework for a semisupervised domain adaptation method for remote sensing image classification. Most of the representation-based domain adaptation methods attempt to find a total transformation matrix for all the samples from the source domain; however, they ignore the individual changes in each class, which often leads to the misalignment of the samples in each class between the two domains. This paper attempts to find new representations for the samples in different classes from the source domain by multiple linear transformations, which corresponds to the practical changes in each class to a higher degree. Furthermore, to avoid the influence of outliers and noise in the source domain samples, low-rank reconstruction is further applied to make the domain adaptation method more robust. In addition, in the stage of predicting the unlabeled samples by label propagation (LP), the proposed LP with instance weighting can effectively further reduce the negative effect of misleading samples from the source domain. The results obtained with a QuickBird data set and a hyperspectral data set confirm the effectiveness and reliability of the proposed method.
机译:本文提出了一种用于遥感图像分类的半监督域自适应方法框架。大多数基于表示的域自适应方法都试图为源域中的所有样本找到一个总转换矩阵。但是,它们忽略了每个类别中的各个变化,这通常会导致两个域中每个类别中的样本不一致。本文试图通过多次线性变换从源域中找到不同类别中样本的新表示形式,这在很大程度上对应于每个类别中的实际变化。此外,为了避免离群值和噪声在源域样本中的影响,进一步应用低秩重构以使域自适应方法更加健壮。另外,在通过标签传播(LP)预测未标记样本的阶段,所提出的具有实例加权的LP可以有效地进一步减少源域误导样本的负面影响。使用QuickBird数据集和高光谱数据集获得的结果证实了该方法的有效性和可靠性。

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