首页> 外文期刊>Journal of geophysical research. Planets >Superpixel segmentation for analysis of hyperspectral data sets, with application to Compact Reconnaissance Imaging Spectrometer for Mars data, Moon Mineralogy Mapper data, and Ariadnes Chaos, Mars
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Superpixel segmentation for analysis of hyperspectral data sets, with application to Compact Reconnaissance Imaging Spectrometer for Mars data, Moon Mineralogy Mapper data, and Ariadnes Chaos, Mars

机译:用于高光谱数据集分析的超像素分割,并应用于紧凑侦察成像光谱仪,用于火星数据,月球矿物学制图仪数据以及阿里亚德内斯·混沌,火星

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摘要

We present a semiautomated method to extract spectral end‐members from hyperspectral images. This method employs superpixels, which are spectrally homogeneous regions of spatially contiguous pixels. The superpixel segmentation is combined with an unsupervised end‐member extraction algorithm. Superpixel segmentation can complement per pixel classification techniques by reducing both scene‐specific noise and computational complexity. The end‐member extraction step explores the entire spectrum, recognizes target mineralogies within spectral mixtures, and enhances the discovery of unanticipated spectral classes. The method is applied to Compact Reconnaissance Imaging Spectrometer for Mars (CRISM) images and compared to a manual expert classification and to state‐of the‐art image analysis techniques. The technique successfully recognizes all classes identified by the expert, producing spectral end‐members that match well to target classes. Application of the technique to CRISM multispectral data and Moon Mineralogy Mapper (M~3) hyperspectral data demonstrates the flexibility of the method in the analysis of a range of data sets. The technique is then used to analyze CRISM data in Ariadnes Chaos, Mars, and recognizes both phyllosilicates and sulfates in the chaos mounds. These aqueous deposits likely reflect changing environmental conditions during the Late Noachian/Early Hesperian. This semiautomated focus‐of‐attention tool will facilitate the identification of materials of interest on planetary surfaces whose constituents are unknown.
机译:我们提出了一种从高光谱图像中提取光谱末端成员的半自动化方法。该方法使用超像素,这些超像素是空间上连续像素的光谱均匀区域。超像素分割与无监督的终端成员提取算法结合在一起。超像素分割可以通过降低特定于场景的噪声和计算复杂度来补充每个像素分类技术。最终成员提取步骤可探索整个光谱,识别光谱混合物中的目标矿物,并增强对意外光谱类别的发现。该方法适用于紧凑型火星侦察成像光谱仪(CRISM)图像,并与手动专家分类和最新的图像分析技术进行了比较。该技术成功地识别了专家确定的所有类别,从而产生了与目标类别非常匹配的光谱最终成员。该技术在CRISM多光谱数据和Moon Mineralogy Mapper(M〜3)高光谱数据中的应用证明了该方法在分析一系列数据集方面的灵活性。然后,该技术用于分析火星Ariadnes Chaos中的CRISM数据,并识别混沌堆中的页硅酸盐和硫酸盐。这些水沉积物可能反映了晚诺阿纪/早黑世时期的环境条件变化。这种半自动的注意力集中工具将有助于在未知成分的行星表面上识别感兴趣的材料。

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