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Comparison of IKONOS derived vegetation index and LiDAR derived canopy height model for grassland management.

机译:IKONOS得出的植被指数和LiDAR得出的冠层高度模型在草地管理中的比较。

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摘要

Forest encroachment is understood to be the main reason for prairie grassland decline across the United States. In Texas and Oklahoma, juniper has been highlighted as particularly opportunistic. This study assesses the usefulness of three remote sensing techniques to aid in locating the areas of juniper encroachment for the LBJ Grasslands in Decatur, Texas.;An object based classification was performed in eCognition and final accuracy assessments placed the overall accuracy at 94%, a significant improvement over traditional pixel based methods. Image biomass was estimated using normalized difference vegetation index (NDVI) for 1 meter resolution IKONOS winter images. A high correlation between the sum of NDVI for tree objects and field tree biomass was determined where R = 0.72, suggesting NDVI sum of a tree area is plausible. However, issues with NDVI saturation and regression produced unrealistically high biomass estimates for large NDVI.;Canopy height model (CHM) derived from 3-5m LiDAR data did not perform as well. LiDAR typically used for digital elevation model (DEM) production was acquired for the CHM and produced correlations of R = 0.26. This suggests an inability for this particular dataset to identify juniper trees. When points that registered a tree height where correlated with field values, an R = 0.5 was found, suggesting denser point spacing would be necessary for this type of LiDAR data. Further refining of the methods used in this study could yield such information as the amount of juniper tree for a given location, fuel loads for prescribed burns and better information for the best approach to remove the juniper and ultimately management juniper encroachment into grasslands.
机译:森林侵占被认为是美国草原草地退化的主要原因。在得克萨斯州和俄克拉荷马州,瞻博网络特别强调机会主义。这项研究评估了三种遥感技术在确定德克萨斯州迪凯特LBJ草原杜松侵害区域时的实用性;在电子认知中进行了基于对象的分类,最终准确性评估将整体准确性定为94%,与传统的基于像素的方法相比有显着改进。使用归一化植被指数(NDVI)估算1米分辨率IKONOS冬季图像的图像生物量。在R = 0.72的情况下,确定了用于树木物体的NDVI和与田间树木生物量之间的高度相关性,表明树木区域的NDVI和是合理的。但是,NDVI饱和度和回归的问题对大型NDVI产生了不切实际的高生物量估算值;从3-5m LiDAR数据推导出的盖层高度模型(CHM)效果不佳。对于CHM,获取了通常用于数字高程模型(DEM)生产的LiDAR,其相关系数为R = 0.26。这表明该特定数据集无法识别杜松树。当记录树高的点与字段值相关时,发现R = 0.5,这表明对于这种类型的LiDAR数据,需要更密集的点间距。进一步完善本研究中使用的方法,可以得出如下信息:给定位置的杜松树数量,指定烧伤的燃料负荷,以及消除杜松树并最终管理杜松侵占草原的最佳方法的更好信息。

著录项

  • 作者

    Parker, Gary.;

  • 作者单位

    University of North Texas.;

  • 授予单位 University of North Texas.;
  • 学科 Physical Geography.;Remote Sensing.;Agriculture Range Management.
  • 学位 M.S.
  • 年度 2009
  • 页码 82 p.
  • 总页数 82
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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