Using Airborne LiDAR to Monitor Spatial Patterns in South Central Oregon Dry Mixed-Conifer Forest

Julia Olszewski, C. Bienz, Amy Markus
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Abstract

A common forest restoration goal is to achieve a spatial distribution of trees consistent with historical forest structure, which can be characterized by the distribution of individuals, clumps, and openings (ICO). With the stated goal of restoring historical spatial patterns comes a need for effectiveness monitoring at appropriate spatial scales. Airborne light detection and ranging (LiDAR) can be used to identify individual tree locations and collect data at landscape scales, offering a method of analyzing tree spatial distributions over the scales at which forest restoration is conducted. In this study, we investigated whether tree locations identified by airborne LiDAR data can be used with existing spatial analysis methods to quantify ICO distributions for use in restoration effectiveness monitoring. Results showed fewer large clumps and large openings, and more small clumps and small openings relative to historical spatial patterns, suggesting that the methods investigated in this study can be used to monitor whether restoration efforts are successful at achieving desired tree spatial patterns. Study Implications: Achieving a desired spatial pattern is often a goal of forest restoration. Monitoring for spatial pattern, however, can be complex and time-consuming in the field. LiDAR technology offers the ability to analyze spatial pattern at landscape scales. Preexisting methods for evaluation of the distribution of individuals, clumps, and openings were used in this study along with LiDAR individual tree detection methodology to assess whether a forest restoration project implemented in a Southern Oregon landscape achieved desired spatial patterns.
利用机载激光雷达监测俄勒冈州中南部干燥混合针叶林的空间格局
森林恢复的共同目标是实现与历史森林结构相一致的树木空间分布,其特征可以表现为个体、团块和开口(ICO)的分布。为了实现恢复历史空间模式的既定目标,需要在适当的空间尺度上进行有效性监测。机载光探测和测距(LiDAR)可用于识别单个树木的位置并在景观尺度上收集数据,提供了一种分析森林恢复尺度上树木空间分布的方法。在这项研究中,我们研究了机载激光雷达数据识别的树木位置是否可以与现有的空间分析方法一起用于量化ICO分布,以用于恢复效果监测。结果表明,相对于历史空间格局,大团块和大开口较少,小团块和小开口较多,表明本研究的方法可用于监测恢复工作是否成功实现所需的树木空间格局。研究启示:实现理想的空间格局往往是森林恢复的目标。然而,在实地监测空间格局可能是复杂和耗时的。激光雷达技术提供了在景观尺度上分析空间格局的能力。本研究使用了现有的评估个体、团块和开口分布的方法,以及激光雷达单株树检测方法,以评估在俄勒冈州南部景观中实施的森林恢复项目是否达到了预期的空间格局。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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