利用多光谱激光雷达探测凋落树木

S. Junttila
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The main objective of this thesis was to investigate the capabilities of multispectral terrestrial lidar in the detection and assessment of tree decline caused by different stressors. This was done by investigating the estimation of a remotely detectable indicator of tree decline, leaf water content (LWC). Specifically, new methods for measuring LWC using multispectral lidar intensity were developed from the leaf to the canopy scale in various environments and the relationship between LWC and tree decline induced by various stressors was investigated. Furthermore, the developed methods were tested in a forest environment to assess the applicability of multispectral lidar in the detection of bark beetle infestation in the field. Studies I-III focused on investigating the relationship between LWC and lidar intensity at multiple wavelengths. 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In study IV, the developed method and the relationship between LWC and tree decline was investigated in the field with European spruce bark beetle (Ips typographus L.) infested trees. It was found that of the LWC metrics studied, gravimetric water content showed significant differences in the early stages of infestation and was more sensitive to bark beetle induced tree decline than equivalent water thickness (i.e. amount of water per leaf area). Linear discriminant models that were developed between infestation severity and lidar intensity metrics from 1550 nm and 905 nm wavelengths showed that green attack stage of the infestation could classified with an overall accuracy of 90%. This dissertation contributes both to the development of an objective and automatable method for detecting and measuring tree decline in the field, and to the understanding of the relationship between LWC and tree decline with implications to remote sensing. 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引用次数: 1

摘要

由于气候变化,世界森林正面临着新的压力。害虫和病原体正在向新的纬度转移,热应激导致全球树木死亡率上升,森林火灾更加频繁。估计气候变化引起的森林和树木减少幅度的不确定性需要新的方法来无偏估计树木减少。由于不同压力源引起的早期变化的微妙性质,开发用于检测树木早期衰退的遥感方法一直是一项重大挑战。多光谱激光雷达技术通过同时提供准确的树木结构三维和光谱信息,具有早期发现树木衰退的潜力。本文的主要目的是研究多光谱地面激光雷达在不同胁迫因素引起的树木退化检测和评估中的能力。这是通过研究树木衰落的一个远程可检测指标,叶片含水量(LWC)的估计来完成的。具体而言,在不同环境下,从叶片到冠层尺度,建立了基于多光谱激光雷达强度测量LWC的新方法,并研究了LWC与不同胁迫因子引起的树木衰退之间的关系。此外,在森林环境中对所开发的方法进行了测试,以评估多光谱激光雷达在野外树皮甲虫侵害检测中的适用性。研究I-III主要研究了LWC与多波长激光雷达强度的关系。首先,使用高光谱激光雷达仪器检测新鲜和干旱处理的苏格兰松(Pinus sylvestris L.)和挪威云杉(Picea abies L.)树木之间的显著变化(研究I)。然后,对苏格兰松、挪威云杉、小叶石灰(Tilia cordata L.)、对挪威枫(Acer platanoides L.)和白桦(Betula pendula L.)在1550 nm和690 nm波长计算的归一化差异指数(NDI)与LWC之间存在很强的相关关系(R2=0.93)。接下来是一项研究(III),其中以挪威云杉幼苗为研究对象,研究了LWC估算和病原菌和干旱诱导的LWC变化。蓝纹真菌(Endoconidiophora polonica)接种的幼苗LWC迅速下降,而干旱处理的幼苗LWC则较为稳定,直到非常严重的干旱。在1550 nm和905 nm波长下,NDI预测幼苗LWC的R2为0.89。在研究四中,以欧洲云杉树皮甲虫(Ips typographus L.)侵染的树木为研究对象,对所建立的方法及LWC与树木衰退的关系进行了研究。结果发现,在研究的LWC指标中,重量含水量在侵染早期表现出显著差异,并且对树皮甲虫引起的树木衰退比等效水厚(即每叶面积水量)更敏感。在1550 nm和905 nm波长的激光雷达强度指标与侵染严重程度之间建立的线性判别模型表明,侵染的绿色攻击阶段的分类总体准确率为90%。本文的研究有助于建立一种客观、自动化的野外树木衰退检测和测量方法,并有助于了解LWC与树木衰退之间的关系,并为遥感提供参考。论文将以音乐视频的形式在这里发布和推广:http://bit.ly/idanproffa。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Utilizing multispectral lidar in the detection of declined trees
The World’s forests are facing novel stress due to climate change. Pest insects and pathogens are shifting towards new latitudes and heat stress is resulting in increased tree mortality and more frequent forest fires globally. Uncertainty in estimating the magnitude of climate change induced forest and tree decline requires new methods for unbiased estimation of tree decline. The development of remote sensing methods to detect early tree decline has been a major challenge due to the subtle nature of the early changes caused by different stressors. Multispectral lidar technology has the potential of detecting early tree decline by providing accurate three-dimensional and spectral information of tree structure simultaneously. The main objective of this thesis was to investigate the capabilities of multispectral terrestrial lidar in the detection and assessment of tree decline caused by different stressors. This was done by investigating the estimation of a remotely detectable indicator of tree decline, leaf water content (LWC). Specifically, new methods for measuring LWC using multispectral lidar intensity were developed from the leaf to the canopy scale in various environments and the relationship between LWC and tree decline induced by various stressors was investigated. Furthermore, the developed methods were tested in a forest environment to assess the applicability of multispectral lidar in the detection of bark beetle infestation in the field. Studies I-III focused on investigating the relationship between LWC and lidar intensity at multiple wavelengths. First, a hyperspectral lidar instrument was used to detect significant changes between fresh and drought-treated Scots pine (Pinus sylvestris L.) and Norway spruce (Picea abies L.) trees (study I). Then, a leaf-scale study (II) with Scots pine, Norway spruce, Small-leaved lime (Tilia cordata L.), Norway maple (Acer platanoides L.) and Silver birch (Betula pendula L.) was conducted and a strong relationship (R2=0.93) between a normalized difference index (NDI) calculated from 1550 nm and 690 nm wavelengths and LWC was found. This was followed by a study (III) where LWC estimation and pathogenand drought-induced variation in LWC was studied with Norway spruce seedlings. Bluestain fungi (Endoconidiophora polonica) inoculated seedlings expressed a rapid decrease in LWC while drought-treated seedlings showed more stable LWC until a very severe drought. LWC of the seedlings was predicted with an R2 of 0.89 using an NDI with 1550 nm and 905 nm wavelengths. In study IV, the developed method and the relationship between LWC and tree decline was investigated in the field with European spruce bark beetle (Ips typographus L.) infested trees. It was found that of the LWC metrics studied, gravimetric water content showed significant differences in the early stages of infestation and was more sensitive to bark beetle induced tree decline than equivalent water thickness (i.e. amount of water per leaf area). Linear discriminant models that were developed between infestation severity and lidar intensity metrics from 1550 nm and 905 nm wavelengths showed that green attack stage of the infestation could classified with an overall accuracy of 90%. This dissertation contributes both to the development of an objective and automatable method for detecting and measuring tree decline in the field, and to the understanding of the relationship between LWC and tree decline with implications to remote sensing. The dissertation will be published and popularized as a music video here: http://bit.ly/idanproffa.
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