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Minimum spanning forest based approach for spatial-spectral hyperspectral images classification

机译:基于跨越的空间光谱斑点图像分类方法

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In this paper, a new method for hyperspectral images classification is proposed. In particular, the notion of region-scale minimum spanning forest (RS-MSF) is introduced. In proposed scheme, hyperspectral pixels are first smoothed by the edge preserving filter and then RS-MSF is constructed. For building a RS-MSF, at first, a pre-segmentation is done by watershed, in order to divide the image into a lot of small regions. These regions will be considered as the nodes of regions of RS-MSF, instead of image pixels. “Nm” regions are randomly selected as markers. On the other hand, pixel-wise classification is performed for label assignment to selected markers. Then From this process, marker map is generated for the construction of MSF. The proposed method is tested on two different data sets of hyperspectral airborne images with different resolutions and contexts. The influences of the number of markers and parameters of filter are investigated in experiments. The performance of the proposed method is compared to those of several classification techniques (both pixel-wise and MSF based spectral-spatial method) using standard quantitative criteria and visual qualitative evaluation.
机译:本文提出了一种新方法,用于高光谱图像分类。特别地,介绍了区域规模最小跨越林(RS-MSF)的概念。在所提出的方案中,首先通过边缘保存滤波器平滑高光谱像素,然后构造RS-MSF。对于建立RS-MSF,首先,通过流域完成预先分割,以便将图像划分为大量的小区域。这些区域将被认为是RS-MSF的区域的节点,而不是图像像素。 “nm”区域被随机选择为标记。另一方面,对选择标记的标签分配执行像素 - WIES分类。然后,从该过程中,为MSF的构造产生标记图。所提出的方法在具有不同分辨率和上下文的两种不同数据集的两种不同的高光谱空气图像上进行测试。在实验中研究了标记数量和过滤器参数的影响。将该方法的性能与使用标准定量标准和视觉定性评估的若干分类技术(基于像素-Wise和MSF和MSF的光谱 - 空间方法)进行比较。

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