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Semisupervised Hyperspectral Image Classification Using Small Sample Sizes

机译:使用小样本量的半监督高光谱图像分类

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摘要

Hyperspectral image classification is a challenging task when only a small number of labeled samples are available due to the difficult, expensive, and time-consuming ground campaigns required to collect the ground-truth information. It is also known that the classification performance is highly dependent on the size of the labeled data. In this letter, a semisupervised learning-based hyperspectral image classification framework is proposed as a solution to these problems. One of the contributions of this letter is the selection of the initial labeled training samples with a subtractive clustering-based approach, which provides the most informative samples for graph-based self-training. Another contribution is the decision-level combination of results obtained by support vector machines and kernel sparse representation classifiers. Additionally, a combination of the spatial and spectral information by creating a window structure is also proposed via integrating contextual information from the neighboring pixels. The explanatory experiments confirm that the proposed framework offers better and more promising results, even using a small number of initial labeled samples.
机译:当由于收集地面真相信息所需的困难,昂贵和耗时的地面运动而导致仅少量标记的样本可用时,高光谱图像分类是一项艰巨的任务。还已知的是,分类性能高度依赖于标记数据的大小。在这封信中,提出了一种基于半监督学习的高光谱图像分类框架,以解决这些问题。这封信的贡献之一是使用基于减法聚类的方法选择了初始标记的训练样本,该方法为基于图的自训练提供了最有用的样本。另一个贡献是支持向量机和内核稀疏表示分类器获得的结果的决策级组合。另外,还提出了通过创建窗口结构来结合空间信息和光谱信息的方法,该方法是通过整合来自相邻像素的上下文信息来实现的。解释性实验证实,即使使用少量的初始标记样品,所提出的框架也能提供更好和更有希望的结果。

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