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Geospatial mapping of vegetation in the Antarctic environment using very high resolution WorldView-2 imagery

机译:使用高分辨率WorldView-2影像对南极环境中的植被进行地理空间映射

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摘要

A robust monitoring of the changes in the distribution and density of cryospheric plant species requires accurate and high-resolution baseline maps of vegetation. Mapping such change at the landscape scale is often problematic, particularly in remote areas, such as Antarctica. Vegetation mapping of plant communities at fine spatial scales is increasingly supported by remote sensing technology in cryospheric regions. Less frequent imaging with high spatial resolution satellite sensors enable more detailed analyses of vegetation change frequently. This study is the first to use high-resolution WorldView-2 (WV-2) imagery to classify vegetation communities on Antarctic oases and to provide semi-automated means to map vegetation, as an imperative indicator for environmental change. Multispectral imagery (MSI) and panchromatic imagery (PAN) from very high resolution WV-2 have been used for mapping of vegetation in different forms in Antarctic environment. A range of supervised classification methods have been executed using pansharpened WV-2 data. This study comparatively and statistically evaluates vegetation mapping results using supervised and unsupervised classification methods to extract vegetation in Larsemann Hills and Schumacher oasis, east Antarctica. We also discuss on the use of supervised pixel-based classifiers and textural measures, in addition to standard multispectral information, to improve the classification of Antarctic vegetation communities. Classification results were validated with independent reference datasets. This work indicates that the overall accuracy of mapping vegetation using WV-2 imagery and semiautomated target extraction methods ranged from 90% to 94%.
机译:要对冰冻圈植物物种的分布和密度的变化进行有力的监测,就需要准确,高分辨率的植被基线图。在景观尺度上绘制这样的变化通常是有问题的,尤其是在南极之类的偏远地区。冰冻圈区域的遥感技术越来越多地支持在精细空间尺度上植物群落的植被制图。使用空间分辨率较高的卫星传感器进行的频率较低的成像可对频率较高的植被变化进行更详细的分析。这项研究是首次使用高分辨率的WorldView-2(WV-2)影像对南极绿洲上的植被群落进行分类,并提供了半自动化的方式来绘制植被图,这是环境变化的必要指示。来自高分辨率WV-2的多光谱图像(MSI)和全色图像(PAN)已用于绘制南极环境中不同形式的植被图。使用泛锐化的WV-2数据已执行了一系列监督分类方法。这项研究使用监督和非监督分类方法比较和统计地评估了植被绘图结果,以提取南极东部的拉瑟曼山和舒马赫绿洲的植被。除了标准的多光谱信息外,我们还讨论了基于监督的基于像素的分类器和纹理度量的使用,以改善南极植被群落的分类。分类结果通过独立的参考数据集进行了验证。这项工作表明,使用WV-2图像和半自动目标提取方法测绘植被的总体准确性介于90%至94%之间。

著录项

  • 来源
    《Land surface and cryosphere remote sensing III》|2016年|98772N.1-98772N.11|共11页
  • 会议地点 New Delhi(IN)
  • 作者单位

    Polar Remote Sensing Department, Earth System Science Organization (ESSO), National Centre for Antarctic Ocean Research (NCAOR), Ministry of Earth Sciences, Headland Sada, Vasco-da-Gama, Goa - 403804, India;

    Department of Geography, University of Madras, Chennai, Tamil Nadu, India;

    Polar Remote Sensing Department, Earth System Science Organization (ESSO), National Centre for Antarctic Ocean Research (NCAOR), Ministry of Earth Sciences, Headland Sada, Vasco-da-Gama, Goa - 403804, India;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    vegetation; WordlView-2; mapping; supervised target detection methods;

    机译:植被; WordlView-2;映射监督目标检测方法;

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