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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >On Gleaning Knowledge From Cross Domains by Sparse Subspace Correlation Analysis for Hyperspectral Image Classification
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On Gleaning Knowledge From Cross Domains by Sparse Subspace Correlation Analysis for Hyperspectral Image Classification

机译:利用稀疏子空间相关分析从跨域收集知识用于高光谱图像分类

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Despite the availability of an increasing amount of remote sensing images, problems still arise in that the knowledge from existing images is underutilized and the collection of reference knowledge for each newly obtained image is expensive. Recently, an attractive solution called "transfer learning" has received increasing attention in the remote sensing field, by transferring knowledge from source domains to help improve the learning procedure in the target domain. In this paper, we propose a sparse subspace correlation analysis-based supervised classification (SSCA-SC) method for transfer learning in hyperspectral remote sensing image classification, which is not restricted by the data dimensionality or the data acquisition sensors. Specifically, we first propose a sparse subspace correlation analysis (SSCA) method to simultaneously learn the optimal projection matrices for heterogeneous domains into a common subspace and obtain sparse reconstruction coefficients over a shared self-expressive dictionary in the derived subspace. In order to fully utilize the label information to improve the class separability, the SSCA-SC framework learns more discriminative representations for the input data by training a corresponding SSCA model for each class. As a result, the projected data belonging to the same class are maximally correlated and represented well, while those from different classes will have a low correlation. Another advantage of the SSCA-SC framework lies in the fact that it not only learns new representations for the data from different domains but it also designs a discriminative and robust classifier that properly adapts to the new representation. The proposed method was tested with three hyperspectral remote sensing data sets, and the experimental results confirm the effectiveness and reliability of the proposed SSCA-SC method.
机译:尽管可获得越来越多的遥感图像,但是仍然存在以下问题:来自现有图像的知识未被充分利用,并且对于每个新获得的图像的参考知识的收集是昂贵的。最近,一种称为“转移学习”的有吸引力的解决方案通过从源域转移知识以帮助改善目标域的学习过程,在遥感领域受到越来越多的关注。本文提出了一种基于稀疏子空间相关分析的监督分类(SSCA-SC)方法进行高光谱遥感图像分类的迁移学习,该方法不受数据维数或数据采集传感器的限制。具体来说,我们首先提出一种稀疏子空间相关分析(SSCA)方法,以同时将异构域的最优投影矩阵学习到一个公共子空间中,并在派生子空间中的共享自表达字典上获得稀疏重建系数。为了充分利用标签信息来提高类的可分离性,SSCA-SC框架通过为每个类训练相应的SSCA模型来学习输入数据的更多判别式表示。结果,属于同一类别的投影数据被最大程度地关联并很好地表示,而来自不同类别的那些投影数据将具有较低的相关性。 SSCA-SC框架的另一个优势在于,它不仅可以学习来自不同领域的数据的新表示形式,而且还可以设计出能够适当适应新表示形式的具有区分性和鲁棒性的分类器。该方法在三个高光谱遥感数据集上进行了测试,实验结果证实了该方法的有效性和可靠性。

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