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An improved spectral-spatial classification framework for hyperspectral remote sensing images

机译:一种改进的高光谱遥感图像光谱空间分类框架

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It needs both spectral and spatial information to refine classification of hyperspectral images. There is a general spectral-spatial framework to address the issue. It consists of three major steps: classification, segmentation and combination, to which we have made two improvements. First, superpixels generated by over-segmentation are clustered according to superpixel-wise distances as to balance homogeneity and heterogeneity. Second, a fuzzy-logic-based combination rule is proposed. It harnesses the fuzzy state of the contribution of segmented and classified maps. Experiments have demonstrated that our adaptation is able to largely increase overall accuracy for simple segmentation method and different classifiers; while conventional methods based on majority voting heavily relies on classifiers. Moreover, recommendations are provided on the best superpixel-wise distance to be selected.
机译:它需要光谱和空间信息来完善高光谱图像的分类。有一个通用的频谱空间框架可以解决该问题。它由三个主要步骤组成:分类,细分和组合,对此我们做了两个改进。首先,根据超像素方向的距离对通过过度分割生成的超像素进行聚类,以平衡同质性和异质性。其次,提出了一种基于模糊逻辑的组合规则。它利用了分段和分类地图贡献的模糊状态。实验表明,对于简单的分割方法和不同的分类器,我们的自适应方法可以大大提高整体准确性;传统的基于多数投票的方法在很大程度上依赖于分类器。此外,针对要选择的最佳超像素方向距离提供了建议。

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