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Semisupervised classification of remote sensing images using efficient neighborhood learning method

机译:利用高效邻域学习方法对遥感影像进行半监督分类

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摘要

Efficiency of a classification model can be enhanced with more number of accurately labeled samples, which are difficult to obtain in remote sensing imagery. To mitigate this issue, semisupervised learning methodologies can be suitably used that exploit both unlabeled and labeled samples in the learning process and lead to the performance improvement of a classification model. With this reasoning, the present article proposes a self-learning semisupervised classification model using a neural network (NN) as the base classifier. The model uses an efficient neighborhood information learning method for the NN to overcome the demerits of existing conventional approaches. It is very crucial and challenging to find the true and the most relevant neighborhood information of unlabeled samples. Using two different approaches, we propose the generation of similarity matrixes for extracting neighborhood information that eventually improve the learning process of NN. The first method considers mutual neighborhood information and the second method uses the class-map of unlabeled samples. Class labels of the unlabeled samples are predicted by a classifier, i.e., trained with the available labeled samples. Finally, the collaborative neighborhood information is derived from these two matrixes and used for the development of the proposed semisupervised classification model. Experimental demonstration on three multispectral and one hyperspectral remote sensing images justified the superiority of the proposed model compared to the existing state-of-the-art methods. For comparative analysis, various performance measures, such as overall accuracy, kappa coefficient, precision, recall, dispersion score, β, and Davies-Bouldin (DB) scores are used.
机译:可以使用更多数量的经过精确标记的样本来提高分类模型的效率,而这些样本在遥感影像中很难获得。为了减轻这个问题,可以适当地使用半监督学习方法,该方法在学习过程中利用未标记和已标记的样本,从而提高分类模型的性能。出于这种原因,本文提出了一种使用神经网络(NN)作为基础分类器的自学习半监督分类模型。该模型为NN使用了一种有效的邻域信息学习方法,以克服现有常规方法的缺点。找到未标记样品的真实且最相关的邻域信息非常关键且具有挑战性。我们使用两种不同的方法,提出了相似性矩阵的生成,用于提取邻域信息,最终改善了NN的学习过程。第一种方法考虑相互邻近信息,第二种方法使用未标记样本的类映射。未标记样品的分类标签由分类器预测,即用可用的标记样品训练。最后,协作邻域信息是从这两个矩阵导出的,并用于拟议的半监督分类模型的开发。通过对三幅多光谱和一幅高光谱遥感图像进行的实验证明,与现有的最新方法相比,该模型具有优越性。为了进行比较分析,使用了各种性能指标,例如总体准确性,kappa系数,精度,召回率,分散分数,β和Davies-Bouldin(DB)分数。

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