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Transductive hyperspectral image classification: toward integrating spectral and relational features via an iterative ensemble system

机译:传导性高光谱图像分类:通过迭代集成系统实现光谱和关系特征的整合

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摘要

Remotely sensed hyperspectral image classification is a very challenging task due to the spatial correlation of the spectral signature and the high cost of true sample labeling. In light of this, the collective inference paradigm allows us to manage the spatial correlation between spectral responses of neighboring pixels, as interacting pixels are labeled simultaneously. The transductive inference paradigm allows us to reduce the inference error for the given set of unlabeled data, as sparsely labeled pixels are learned by accounting for both labeled and unlabeled information. In this paper, both these paradigms contribute to the definition of a spectral-relational classification methodology for imagery data. We propose a novel algorithm to assign a class to each pixel of a sparsely labeled hyperspectral image. It integrates the spectral information and the spatial correlation through an ensemble system. For every pixel of a hyperspectral image, spatial neighborhoods are constructed and used to build application-specific relational features. Classification is performed with an ensemble comprising a classifier learned by considering the available spectral information (associated with the pixel) and the classifiers learned by considering the extracted spatio-relational information (associated with the spatial neighborhoods). The more reliable labels predicted by the ensemble are fed back to the labeled part of the image. Experimental results highlight the importance of the spectral-relational strategy for the accurate transductive classification of hyperspectral images and they validate the proposed algorithm.
机译:由于光谱特征的空间相关性以及真实样品标记的高成本,遥感高光谱图像分类是一项非常具有挑战性的任务。鉴于此,集体推理范例使我们能够管理相邻像素光谱响应之间的空间相关性,因为同时标记了交互像素。转导推理范例使我们能够减少给定的未标记数据集的推理错误,因为稀疏标记的像素是通过考虑标记和未标记的信息来学习的。在本文中,这两种范例都有助于定义图像数据的光谱关系分类方法。我们提出了一种新颖的算法,为稀疏标记的高光谱图像的每个像素分配一个类。它通过集成系统整合光谱信息和空间相关性。对于高光谱图像的每个像素,将构建空间邻域并将其用于构建特定于应用程序的关系特征。使用包括通过考虑可用频谱信息(与像素相关联)而学习的分类器和通过考虑所提取的空间关系信息(与空间邻域相关联)而学习的分类器的集合来执行分类。集合预测的更可靠的标签将反馈到图像的标签部分。实验结果强调了光谱关系策略对高光谱图像的准确转换分类的重要性,并验证了所提出的算法。

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