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首页> 外文期刊>Canadian Journal of Remote Sensing >Combined high-density lidar and multispectral imagery for individual tree crown analysis
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Combined high-density lidar and multispectral imagery for individual tree crown analysis

机译:结合高密度激光雷达和多光谱图像进行单个树冠分析

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Lidar technology has reached a point where ground and forest canopy elevation models can be produced at high spatial resolution. Individual tree crown isolation and classification methods are developing rapidly for multispectral imagery. Analysis of multispectral imagery, however, does not readily provide tree height information and lidar data alone cannot provide species and health attributes. The combination of lidar and multispectral data at the individual tree level may provide a very useful forest inventory tool. A valley following approach to individual tree isolation was applied to both high resolution digital frame camera imagery and a canopy height model (CHM) created from high-density lidar data over a test site of even aged (55 years old) Douglas-fir plots of varying densities (300, 500, and 725 stems/ha) on the west coast of Canada. Tree height was determined from the laser data within the automated crown delineations. Automated tree isolations of the multispectral imagery achieved 80%-90% good correspondence with the ground reference tree delineations based on ground data. However, for the more open plot there were serious commission errors (false trees isolated) mostly related to sunlit ground vegetation. These were successfully reduced by applying a height filter to the isolations based on the lidar data. Isolations from the lidar data produced good isolations with few commission errors but poorer crown outline delineations especially for the densest plot. There is a complimentarity in the two data sources that will help in tree isolation. Heights of the automated isolations were consistently underestimated versus ground reference trees with an average error of 1.3 m. Further work is needed to test and develop tools and capabilities, but there is an effective synergy of the two high resolution data sources for providing needed forest inventory information.
机译:激光雷达技术已经达到可以以高空间分辨率生成地面和林冠层高程模型的地步。针对多光谱图像的单个树冠隔离和分类方法正在迅速发展。但是,对多光谱图像的分析无法轻松提供树高信息,而仅凭激光雷达数据无法提供物种和健康属性。单个树木级别的激光雷达和多光谱数据的组合可能会提供一个非常有用的森林清查工具。在单独的树龄隔离方法上,采用了谷底追踪法,将其应用于高分辨率的数码相机图像和由高密度激光雷达数据创建的树冠高度模型(CHM)上,该数据甚至适用于年龄超过(55岁)的道格拉斯冷杉图样。加拿大西海岸的不同密度(300、500和725茎/公顷)。根据自动树冠轮廓内的激光数据确定树高。与基于地面数据的地面参考树轮廓相比,多光谱图像的自动树隔离实现了80%-90%的良好对应关系。但是,对于更开放的地块,存在严重的佣金错误(孤立的假树),主要与阳光照射下的地面植被有关。通过根据激光雷达数据对隔离物应用高度过滤器,成功减少了这些情况。激光雷达数据的隔离产生了良好的隔离,几乎没有佣金错误,但冠轮廓轮廓却较差,尤其是对于最密集的绘图而言。这两个数据源之间有一些互补之处,这将有助于树隔离。与地面参考树相比,自动隔离的高度始终被低估,平均误差为1.3 m。需要进一步的工作来测试和开发工具和功能,但是两个高分辨率数据源之间存在有效的协同作用,以提供所需的森林清单信息。

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