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Identification of iron-bearing minerals based on HySpex hyperspectral remote sensing data

机译:基于HYSPEX高光谱遥感数据的耐铁矿物识别

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摘要

Our research group built a super-low altitude detection platform with power delta wings and mounted it with a HySpex hyperspectral sensor. This platform has great potential for extracting alteration information as it can provide high spectral and spatial resolution images. The aim of this study is to verify the reliability and accuracy of alteration information extraction using this platform. The seven-scene hyperspectral images of the Karatagh region in Hami of Xinjiang obtained by the platform in September 2017 were used to identify iron-bearing minerals. First, these images were preprocessed by splicing, atmospheric correction, and geometric correction. Second, the images were compared with the United States Geological Survey (USGS) standard spectra of similarities between the end-member spectra of goethite-, limonite-, and jarosite-altered minerals. Third, the three altered minerals were mapped in the test area based on the end-member spectrum. The results show that the correlations between the end-member spectra of three altered minerals, including goethite, limonite, and jarosite, obtained from the HySpex image and corresponding spectra in USGS reach 0.92873, 0.95098, and 0.8875, respectively. The end-member spectral reflectance values were higher than those in the spectral library. The original spectral data after the continuum-removal and the local quantitative display show that the spectrum at the feature absorption location was similar to the reference spectrum. On this basis, the distribution maps of goethite, limonite, and jarosite iron-stained altered minerals in the Hami Gobi area were produced and field verified. The data show that the information of identified minerals from the HySpex hyperspectral data were in accordance with the actual situation. Both methods can recognize jarosite well, the spectral angular mapping method is better than the back propagation (BP) neural network for goethite recognition, and the BP neural network of limonite recognition is better than the spectral angular mapping method. The above results prove that the alteration information can be effectively identified using the HySpex hyperspectral data integrated on a super-low altitude detection platform, which is of great significance to the rapid delineation of minerogenic prospects area. (C) 2019 Society of Photo-Optical Instrumentation Engineers (SPIE)
机译:我们的研究小组建立了一个带有Power Delta翼的超低高度检测平台,并使用HYSPEX高光谱传感器安装。该平台具有提取改变信息的巨大潜力,因为它可以提供高频和空间分辨率图像。本研究的目的是使用该平台验证改变信息提取的可靠性和准确性。 2017年9月由该平台获得的新疆哈密哈迪七场高光谱图像用于识别耐铁矿物质。首先,通过拼接,大气校正和几何校正预处理这些图像。其次,将图像与美国地质调查(USGS)的地质调查(USGS)标准光谱进行比较,在甲酸酯,褐铁矿 - 改变蛋白质改变的矿物质的最终成员光谱之间。第三,基于最终成员光谱在测试区域中映射了三种改变的矿物质。结果表明,从Hyspex图像中获得的三种改变的矿物质的最终成员光谱与USGS中的相应光谱分别达到0.92873,0.95098和0.8875。端构件光谱反射率值高于光谱库中的端子。迁移连续和局部定量显示之后的原始光谱数据表明,特征吸收位置的频谱类似于参考光谱。在此基础上,制作了哈密戈壁地区的甲磺酸盐,褐铁矿和杂体铁染色的改变矿物的分布图和验证。数据显示,HYSPEX HypersPectral数据中识别的矿物质的信息符合实际情况。这两种方法都可以识别Jar二井,光谱角映射方法优于用于可触发识别的后传播(BP)神经网络,并且褐铁矿识别的BP神经网络优于光谱角映射方法。以上结果证明,可以使用集成在超低高度检测平台上的HYSPEX高光谱数据有效地识别改变信息,这对Minerogenic ProSpects区域的快速描绘具有重要意义。 (c)2019年光学仪表工程师协会(SPIE)

著录项

  • 来源
    《Journal of Applied Remote Sensing》 |2019年第4期|共16页
  • 作者单位

    Chinese Acad Sci Xinjiang Inst Ecol &

    Geog State Key Lab Desert &

    Oasis Ecol Urumqi Peoples R China;

    Chinese Acad Sci Xinjiang Inst Ecol &

    Geog State Key Lab Desert &

    Oasis Ecol Urumqi Peoples R China;

    Chinese Acad Sci Xinjiang Inst Ecol &

    Geog State Key Lab Desert &

    Oasis Ecol Urumqi Peoples R China;

    Chinese Acad Sci Xinjiang Inst Ecol &

    Geog State Key Lab Desert &

    Oasis Ecol Urumqi Peoples R China;

    Chinese Acad Sci Xinjiang Inst Ecol &

    Geog State Key Lab Desert &

    Oasis Ecol Urumqi Peoples R China;

    Beijing IRIS Remote Sensing Technol Ltd Beijing Peoples R China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 计量学;
  • 关键词

    super-low-altitude detection; altered mineral mapping; HySpex; spectral signature;

    机译:超低高度检测;改变矿物映射;HYSPEX;光谱签名;

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