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Super-Resolution Classification of Hyperspectral Images with a Small Training Set Using Semi-Supervised Learning

机译:使用半监督学习的小型训练的超级分辨率分类

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Classification has been one of the most important applications of Hyperspectral images (HSIs) in the past decade, because of the outstanding discrimination among different classes ensured by abundant and detailed spectral information enclosed in HSIs. While the classification accuracy must be guaranteed by plenty of training samples, which is difficult to be satisfied in many practical cases. Meanwhile, because of its comparatively low spatial resolution, mixed pixels are widely existed in HSIs which makes subpixel level classification techniques more preferable rather than traditional pixel-level ones. A novel super-resolution classification method is proposed in this paper to deal with the two above mentioned problems in HSI classification, that is, limited number of training samples and widely existed mixed pixels. Specifically, semi-supervised learning is emoployed for appropriate augmentation of training set, with which the abundance fractions for each class within a mixed pixel are estimated using collaborative representation. And finally, the classification result with higher spatial resolution is obtained with subpixel spatial attraction model based subpixel mapping. Simulative experimental results illustrate its outperformance over some stateof-the-art subpixel level classification methods.
机译:由于HSIS括起来的丰富和详细的光谱信息,分类是过去十年中高光谱图像(HSIS)最重要的应用中最重要的应用之一。虽然必须通过大量培训样本保证分类准确性,但在许多实际情况下,这难以满足。同时,由于其相对低的空间分辨率,在HSI中广泛存在混合像素,其使子像素级别分类技术更优选而不是传统的像素级。本文提出了一种新的超分辨率分类方法,以应对HSI分类中提到的两个问题,即有限数量的训练样本和广泛存在的混合像素。具体地,半监督学习是为了适当的训练集的增强,其中使用协作表示估计混合像素内的每个类的丰度分数。最后,利用基于子像素空间吸引模型的子像素映射获得具有更高空间分辨率的分类结果。模拟实验结果说明了对某些州的艺术亚像素级别分类方法的表现。

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