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首页> 外文期刊>International journal of remote sensing >Towards refined estimation of vegetation carbon stock in Auckland, New Zealand using WorldView-2 and LiDAR data: the impact of scaling
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Towards refined estimation of vegetation carbon stock in Auckland, New Zealand using WorldView-2 and LiDAR data: the impact of scaling

机译:使用WorldView-2和LiDAR数据对新西兰奥克兰的植被碳储量进行精细估算:缩放的影响

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摘要

It is necessary to estimate carbon (C) stored in urban vegetation for the purpose of carbon accounting and trading. This study aims to develop a refined method for reliably estimating above-ground carbon (AGC) stock of urban vegetation from integrated WorldView-2 imagery and Light Detection And Ranging (LiDAR) data in Auckland, New Zealand. Also assessed in this study is the impact of image resolution on regional AGC estimates by vegetation type. The integration of WorldView-2 imagery with a 2-m digital surface model produced from LiDAR data enables urban vegetation to be mapped into trees (101.5 km(2)), shrubs (64.9 km(2)), and grasses (172.2 km(2)) at a producer's accuracy over 95.9%. The AGC stock of trees, shrubs and grasses is estimated at 1,134,287, 207,606, and 127,427 Mg C, respectively, from the vegetation map. Overall, the total AGC of all types of vegetation does not vary significantly with image spatial resolution over the range of 5 to 30 m if estimated using the same model. This is because high AGC densities are generalised at a coarser resolution, but the larger pixel size compensates for the decrease. Although the spatial resolution does not affect the most significant spectral predicators of plot-level AGC noticeably, it has an obvious effect on both model accuracy and complexity. Thus, the impact of image resolution on AGC would be pronounced if it were estimated using different models that were the best at a given resolution. Of the three vegetation types, the AGC of shrubs is the most variable with spatial resolution, followed by trees. Thus, the AGC of relatively small but more spatially fragmented vegetation parcels is more susceptible to change in image spatial resolution. The estimation model based on spectral features of vegetation has the lowest room-mean-square-error at 15 m. More research is needed to confirm whether it is true in other natural environments in future studies.
机译:为了进行碳核算和交易,有必要估算城市植被中存储的碳(C)。这项研究旨在开发一种完善的方法,以通过综合的WorldView-2影像和新西兰奥克兰的光探测与测距(LiDAR)数据可靠地估算城市植被的地上碳(AGC)存量。在这项研究中还评估了图像分辨率对按植被类型划分的区域AGC估计的影响。将WorldView-2影像与从LiDAR数据生成的2米数字表面模型相集成,可以将城市植被映射到树木(101.5 km(2)),灌木丛(64.9 km(2))和草丛(172.2 km( 2)),制作人的准确性超过95.9%。根据植被图,AGC的树木,灌木和草的碳储量分别估计为1,134,287、207,606和127,427 MgC。总体而言,如果使用同一模型进行估算,则在5至30 m的范围内,所有类型植被的总AGC随图像空间分辨率的变化都不会显着变化。这是因为在较粗的分辨率下可以得到较高的AGC密度,但是较大的像素大小可以补偿这种减小。尽管空间分辨率不会明显影响绘图级AGC的最重要谱谓词,但它对模型的准确性和复杂性都有明显的影响。因此,如果使用给定分辨率下最佳的不同模型进行估算,则图像分辨率对AGC的影响将很明显。在这三种植被类型中,灌木的AGC随空间分辨率的变化最大,其次是树木。因此,相对较小但空间上更零碎的植被的AGC更容易受到图像空间分辨率变化的影响。基于植被光谱特征的估计模型在15 m处具有最小的均方根误差。在未来的研究中,需要更多的研究来确认在其他自然环境中是否如此。

著录项

  • 来源
    《International journal of remote sensing》 |2019年第24期|8727-8747|共21页
  • 作者

  • 作者单位

    Univ Auckland Sch Environm Auckland New Zealand;

  • 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
  • 关键词

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