首页> 外文期刊>International journal of remote sensing >Remote predictive mapping of bedrock geology using image classification of Landsat and SPOT data, western Minto Inlier, Victoria Island, Northwest Territories, Canada
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Remote predictive mapping of bedrock geology using image classification of Landsat and SPOT data, western Minto Inlier, Victoria Island, Northwest Territories, Canada

机译:使用Landsat和SPOT数据的图像分类对基岩地质进行远程预测制图,加拿大西北地区维多利亚岛的Minto Inlier西部

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摘要

Supervised classification (robust classification method) of Landsat-7 and SPOT-5 data was used to analyse the bedrock geology of a part of the western Minto Inlier on Victoria Island, Canada. The robust classification method was used as it provides a series of uncertainty measures for evaluating the classification results. Six bedrock classes including gabbro, basalt, carbonate of the Wynniatt Formation, quartz-arenite of the Kuujjua Formation, evaporite of the Minto Inlet and Killian Formations and Paleozoic carbonate together with six surficial classes including vegetation were defined as the training data set. The resulting classified images derived from the Landsat and SPOT data were very similar in terms of the regional distribution of lithological classes, as reflected by fairly high classification accuracies for both image types. Gabbro and basalt, despite having a similar min-eralogical composition, are spectrally distinct throughout most of the study area. Complicating spectral signatures of overlying glacial sediments and/or other overburden materials and spectral similarities between some of the lithologies caused poorer classification in some areas. Generally, the Landsat imagery provided better spectral separability between most of the lithological units than the SPOT imagery. However, in certain areas where the spectral separation between different lithologies is not dependant on the shortwave infrared-2 (SWIR-2; band 7 on Landsat) and/or blue bands (band 1 on Landsat), the SPOT imagery provided a better classification because of higher spatial resolution.
机译:使用Landsat-7和SPOT-5数据的监督分类(稳健分类方法)来分析加拿大维多利亚岛的Minto Inlier西部部分地区的基岩地质情况。使用鲁棒分类方法是因为它提供了一系列不确定性度量来评估分类结果。训练数据集被定义为6个基岩类,包括Wynniatt组的辉长岩,​​玄武岩,碳酸盐,Kuujjua组的石英亚砷酸盐,Minto入口和Killian组的蒸发岩和古生碳酸盐,以及包括植被在内的6个表面类。就岩性类别的区域分布而言,从Landsat和SPOT数据得出的分类图像非常相似,这两种图像类型的分类精度都很高。尽管具有最小的赤潮成分,但Gabbro和玄武岩在整个研究区域的光谱上却截然不同。上覆的冰川沉积物和/或其他覆岩材料的光谱特征复杂,某些岩性之间的光谱相似性导致某些地区的分类较差。通常,与SPOT影像相比,Landsat影像在大多数岩性单位之间提供了更好的光谱可分离性。但是,在某些区域之间,不同岩性之间的光谱分离不取决于短波红外2(SWIR-2; Landsat上的波段7)和/或蓝波段(Landsat上的波段1),SPOT图像提供了更好的分类因为更高的空间分辨率。

著录项

  • 来源
    《International journal of remote sensing》 |2012年第22期|p.6876-6903|共28页
  • 作者单位

    Geological Survey of Canada, Ottawa, ON, Canada;

    Geological Survey of Canada, Ottawa, ON, Canada;

    Geological Survey of Canada, Ottawa, ON, Canada;

    Geological Survey of Canada, Ottawa, ON, Canada;

    Geological Survey of Canada, Ottawa, ON, Canada;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
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