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A novel subpixel mapping approach based on spectral unmixing for hyperspectral images

机译:一种基于光谱分解的高光谱图像亚像素映射新方法

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Hyperspectal image classification in subpixel level is treated in this paper. A hybrid framework is proposed, in which two paralleled branches are integrated by decision fusion. In one branch, a subpixel level segmentation map is obtained by applying unsupervised clustering to the upsampled hyperspectral image. In the other branch, a subpixel level classification map is obtained using subpixel spatial attraction model. To improve abundance estimation accuracy, novel endmember selection and abundance estimation strategies are employed for spectral unmixing. Experimental results illustrate that, compared to some existing subpixel mapping approaches, the newly proposed one is capable of producing results with higher accuracy. The improvement in classification accuracy can be attributed to the usage of the novel endmemeber selection and abundance estimation strategies in spectral unmixing and the consideration of spatial contextual information in decision fusion.
机译:本文讨论了亚像素级的高光谱图像分类。提出了一种混合框架,其中通过决策融合将两个并行分支集成在一起。在一个分支中,通过将无监督聚类应用于上采样的高光谱图像来获得子像素级分割图。在另一分支中,使用子像素空间吸引力模型获得子像素级别分类图。为了提高丰度估计的准确性,采用新颖的端成员选择和丰度估计策略进行频谱分解。实验结果表明,与现有的一些子像素映射方法相比,新提出的方法能够产生更高的精度。分类准确性的提高可以归因于在频谱分解中使用新颖的终端成员选择和丰度估计策略,以及在决策融合中考虑了空间上下文信息。

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