高光谱激光雷达连续测绘树木后的数据质量分析

Shao Dong, Yi Lin
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摘要

摘要光探测与测距(LiDAR)作为一种创新的遥感工具,不仅能捕捉目标反射率,还能提供其形态参数。传统的单波段/多波段激光雷达和多光谱激光雷达(MSL)目前被用于三维建模和植物生化参数反演等应用,但效果有限。此外,高光谱激光雷达(HSL)具有更多的光谱检测通道和更高的光谱分辨率,已被证明能更有效地满足这些要求,并在地物和土地覆被分类任务中表现出卓越的能力。然而,通过 HSL 获取的点云经常出现质量缺陷,包括密度不均匀和噪声过大。同时,全球范围内明显缺乏规范 HSL 系统测量协议的技术规范和操作标准。针对这一空白,本研究构建了一个高光谱点云数据质量的系统分析框架,并尝试对使用芬兰地理空间研究所(FGI)8 波段高光谱激光扫描仪连续扫描的 30 个树木点云进行定性分析。此外,这项研究还验证了将 8 波段 HSL 系统用于反演过程以量化叶绿素叶片含量的理论可行性。除了检测桦树冠层点云中反射率的时变模式外,本研究的结果还有效地确定了高光谱激光扫描系统噪声水平较高的波段,证明了我们提出的质量分析方法的有效性。本研究提出的方法可作为推进高光谱激光雷达在各种相关遥感和地球观测应用中的应用的基石。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data quality analysis after hyperspectral LiDAR sequentially mapping trees
Abstract. Light detection and ranging (LiDAR), as an innovative remote sensing tool, not only captures target reflectance but also provides its morphological parameters. Traditional single/multi-band LiDAR and multispectral LiDAR (MSL) are presently employed in applications such as 3D modeling and plant biochemical parameter inversion albeit with effectiveness limited. Moreover, hyperspectral LiDAR (HSL) distinguished by its expanded array of spectral detection channels and enhanced spectral resolution, has proven more effective in meeting these requirements and also exhibits superior capabilities in both feature and land cover classification tasks. Nevertheless, point clouds acquired through HSL frequently exhibit quality deficiencies, including uneven density and excessive noise. Meanwhile, there exists a notable absence of technical specifications and operational standards governing the measurement protocols for HSL systems globally. To address this gap, this study constructed a systematic analysis framework of data quality in hyperspectral point clouds and endeavors to qualitatively analyse 30 tree point clouds continuously scanned with Finnish Geospatial Research Institute (FGI) 8-band hyperspectral laser scanner. Furthermore, this research validated the theoretical feasibility of employing the 8-band HSL system for inversion processes aimed at quantifying chlorophyll leaf content. Apart from detecting the time-varying patterns of reflectance within birch canopy point clouds, the results of this study also effectively pinpointed the band exhibiting heightened noise level of the HSL system, demonstrating the efficacy of our proposed quality analysis methodology. The endeavor presented in this study can serve as a cornerstone for advancing hyperspectral LiDAR across a diverse array of related remote sensing and earth observation applications.
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