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Two-Level Feature Extraction Framework for Hyperspectral Image Classification

机译:高光谱图像分类的两级特征提取框架

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Dimensionality reduction methods address the challenges associated with high dimensional hyperspectral data by giving a low-dimensional representation preserving only the common, global spectral information. However, while classifying the image using reduced representation of the samples, subtle, discriminative information required to distinguish between similar classes may get disappeared. In our paper, we have demonstrated data transformed using how middle principle components emphasize the subtle differences between such classes. Based on this premise, a two-level feature extraction framework for classifying hyperspectral images consisting of similar and distinct classes is proposed. Experimental results indicate that the framework is able to address the issue of confusion in discriminating between similar classes efficiently.
机译:维数减少方法通过提供仅保留常见的全局光谱信息的低维表示来解决与高维光谱数据相关的挑战。然而,在分类图像使用样本的减少表示,微妙地,区分类似类所需的鉴别信息可能会消失。在我们的论文中,我们已经展示了使用中间原理组件如何强调此类类别之间的微妙差异的数据。基于这一前提,提出了一种用于分类由类似和不同类别组成的超光图像的两级特征提取框架。实验结果表明,该框架能够在有效地歧视类似类之间的困惑问题。

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