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Supervised and Semi-Supervised Multi-View Canonical Correlation Analysis Ensemble for Heterogeneous Domain Adaptation in Remote Sensing Image Classification

机译:遥感图像分类中异构域自适应的监督半监督多视图典范相关分析集合

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In this paper, we present the supervised multi-view canonical correlation analysis ensemble (SMVCCAE) and its semi-supervised version (SSMVCCAE), which are novel techniques designed to address heterogeneous domain adaptation problems, i.e., situations in which the data to be processed and recognized are collected from different heterogeneous domains. Specifically, the multi-view canonical correlation analysis scheme is utilized to extract multiple correlation subspaces that are useful for joint representations for data association across domains. This scheme makes homogeneous domain adaption algorithms suitable for heterogeneous domain adaptation problems. Additionally, inspired by fusion methods such as Ensemble Learning (EL), this work proposes a weighted voting scheme based on canonical correlation coefficients to combine classification results in multiple correlation subspaces. Finally, the semi-supervised MVCCAE extends the original procedure by incorporating multiple speed-up spectral regression kernel discriminant analysis (SRKDA). To validate the performances of the proposed supervised procedure, a single-view canonical analysis (SVCCA) with the same base classifier (Random Forests) is used. Similarly, to evaluate the performance of the semi-supervised approach, a comparison is made with other techniques such as Logistic label propagation (LLP) and the Laplacian support vector machine (LapSVM). All of the approaches are tested on two real hyperspectral images, which are considered the target domain, with a classifier trained from synthetic low-dimensional multispectral images, which are considered the original source domain. The experimental results confirm that multi-view canonical correlation can overcome the limitations of SVCCA. Both of the proposed procedures outperform the ones used in the comparison with respect to not only the classification accuracy but also the computational efficiency. Moreover, this research shows that canonical correlation weighted voting (CCWV) is a valid option with respect to other ensemble schemes and that because of their ability to balance diversity and accuracy, canonical views extracted using partially joint random view generation are more effective than those obtained by exploiting disjoint random view generation.
机译:在本文中,我们介绍了有监督的多视图规范相关分析集成(SMVCCAE)及其半有监督的版本(SSMVCCAE),它们是旨在解决异构域自适应问题(即要处理数据的情况)的新颖技术和识别的是从不同的异构域收集的。具体而言,多视图规范相关性分析方案可用于提取多个相关子空间,这些子空间可用于跨域数据关联的联合表示。该方案使得同质域自适应算法适合于异构域自适应问题。此外,受诸如集成学习(EL)之类的融合方法的启发,这项工作提出了一种基于规范相关系数的加权投票方案,以在多个相关子空间中组合分类结果。最后,半监督MVCCAE通过合并多个加速光谱回归核判别分析(SRKDA)扩展了原始程序。为了验证所提出的监督程序的性能,使用了具有相同基础分类器(Random Forests)的单视图规范分析(SVCCA)。同样,为了评估半监督方法的性能,与其他技术进行了比较,例如Logistic标签传播(LLP)和Laplacian支持向量机(LapSVM)。所有方法都在两个真实的高光谱图像上进行了测试,这两个图像被视为目标域,并使用了从合成的低维多光谱图像中训练的分类器,这些图像被视为原始源域。实验结果证实,多视图规范相关可以克服SVCCA的局限性。就分类准确度和计算效率而言,两种拟议的程序均优于比较中使用的程序。此外,这项研究表明,规范相关加权投票(CCWV)是相对于其他集成方案的有效选择,并且由于它们具有平衡多样性和准确性的能力,因此使用部分联合随机视图生成提取的规范视图比获得的规范更为有效。通过利用不相交的随机视图生成。

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