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Large Footprint LiDAR Data Processing for Ground Detection and Biomass Estimation.

机译:用于地面检测和生物量估计的大面积LiDAR数据处理。

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摘要

Ground detection in large footprint waveform Light Detection And Ranging (LiDAR) data is important in calculating and estimating downstream products, especially in forestry applications. For example, tree heights are calculated as the difference between the ground peak and first returned signal in a waveform. Forest attributes, such as aboveground biomass, are estimated based on the tree heights. This dissertation investigated new metrics and algorithms for estimating aboveground biomass and extracting ground peak location in large footprint waveform LiDAR data.;In the first manuscript, an accurate and computationally efficient algorithm, named Filtering and Clustering Algorithm (FICA), was developed based on a set of multiscale second derivative filters for automatically detecting the ground peak in an waveform from Land, Vegetation and Ice Sensor. Compared to existing ground peak identification algorithms, FICA was tested in different land cover type plots and showed improved accuracy in ground detections of the vegetation plots and similar accuracy in developed area plots. Also, FICA adopted a peak identification strategy rather than following a curve-fitting process, and therefore, exhibited improved efficiency.;In the second manuscript, an algorithm was developed specifically for shrub waveforms. The algorithm only partially fitted the shrub canopy reflection and detected the ground peak by investigating the residual signal, which was generated by deducting a Gaussian fitting function from the raw waveform. After the deduction, the overlapping ground peak was identified as the local maximum of the residual signal. In addition, an applicability model was built for determining waveforms where the proposed PCF algorithm should be applied.;In the third manuscript, a new set of metrics was developed to increase accuracy in biomass estimation models. The metrics were based on the results of Gaussian decomposition. They incorporated both waveform intensity represented by the area covered by a Gaussian function and its associated heights, which was the centroid of the Gaussian function. By considering signal reflection of different vegetation layers, the developed metrics obtained better estimation accuracy in aboveground biomass when compared to existing metrics. In addition, the new developed metrics showed strong correlation with other forest structural attributes, such as mean Diameter at Breast Height (DBH) and stem density.;In sum, the dissertation investigated the various techniques for large footprint waveform LiDAR processing for detecting the ground peak and estimating biomass. The novel techniques developed in this dissertation showed better performance than existing methods or metrics.
机译:大面积波形波形中的地面检测光检测和测距(LiDAR)数据对于计算和估算下游产品非常重要,尤其是在林业应用中。例如,树高计算为地面峰值与波形中的第一个返回信号之间的差。森林属性,例如地上生物量,是根据树高估算的。本文研究了用于估计大足迹波形LiDAR数据中地上生物量和提取地面峰值位置的新指标和算法。在第一篇论文的基础上,开发了一种精确且计算效率高的算法,即滤波和聚类算法(FICA)。一套多尺度二阶导数滤波器,用于自动检测来自陆地,植被和冰传感器的波形中的地面峰值。与现有的地面峰值识别算法相比,FICA在不同的土地覆盖类型样地中进行了测试,显示出植被样地的地面检测精度更高,而发达地区的样地精度更高。同样,FICA采用峰识别策略而不是遵循曲线拟合过程,因此显示出更高的效率。在第二稿中,专门针对灌木波形开发了一种算法。该算法仅对灌木冠层反射进行了部分拟合,并通过研究残留信号检测了地面峰值,该残留信号是通过从原始波形中扣除高斯拟合函数而生成的。扣除后,重叠的接地峰被识别为残留信号的局部最大值。此外,建立了适用性模型来确定应在其中应用提出的PCF算法的波形。在第三稿中,开发了一套新的度量标准以提高生物量估计模型的准确性。度量基于高斯分解的结果。他们结合了由高斯函数覆盖的区域表示的波形强度及其相关的高度,该高度是高斯函数的质心。通过考虑不同植被层的信号反射,与现有指标相比,开发的指标在地上生物量方面获得了更好的估计精度。此外,新开发的度量标准还与其他森林结构属性(如胸高(DBH)的平均直径和茎密度)具有很强的相关性。总之,本文研究了用于大面积波形激光雷达探测地面的各种技术。峰值并估算生物量。与现有方法或指标相比,本文开发的新技术具有更好的性能。

著录项

  • 作者

    Zhuang, Wei.;

  • 作者单位

    State University of New York College of Environmental Science and Forestry.;

  • 授予单位 State University of New York College of Environmental Science and Forestry.;
  • 学科 Environmental engineering.;Remote sensing.;Forestry.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 133 p.
  • 总页数 133
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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