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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Monitoring conifer cover: Leaf-off lidar and image-based tracking of eastern redcedar encroachment in central Nebraska
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Monitoring conifer cover: Leaf-off lidar and image-based tracking of eastern redcedar encroachment in central Nebraska

机译:监测针叶树封面:内布拉斯加州中部的东部雷德尔侵占东部的叶子激光雷达和基于形象的追踪

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摘要

Eastern redcedar (Juniperus virginiana L.) encroachment on the Great Plains has led to decreases in biodiversity, water availability, and grazing land while increasing the risk of catastrophic wildfires. Quantifying the current spatial distribution of eastern redcedar can aid land management efforts to combat encroachment, and extending this information over time can improve our understanding of the patterns and drivers of encroachment. We compared several remote sensing methods for mapping percent conifer cover to develop an approach that would be applicable for monitoring eastern redcedar encroachment across the Great Plains to support management goals. Leaf-off lidar was filtered through a novel approach using normalized return intensity and local canopy density to remove residual points pertaining to deciduous trees, which enabled us to calculate percent conifer cover. A sample of the conifer cover derived from leaf-off lidar was then used to test passive imagery-based methods that could be applied over a greater spatiotemporal extent. These imagery-based methods included Spatial Wavelet Analysis applied to very high-resolution imagery and random forest regression modeling with Landsat 8 and Sentinel-2 based predictive layers generated in Google Earth Engine from a single image, seasonal composites, and harmonic regression coefficients produced from an annual time series. Spatial Wavelet Analysis provided high accuracy (similar to 5% RMSE) in areas where conifer cover was less than 10%, but accuracy rapidly decreased with increases in observed cover such that this method had a very low overall accuracy (42.5% RMSE). Landsat 8 and Sentinel-2 based predictors yielded similar performance to each other in models of conifer cover (9.7 to 13.3% RMSE), but seasonal composites from either sensor provided higher predictive power than either use of a single winter image or harmonic regression coefficients. According to recent estimates from the Forest Inventory and Analysis Program, eastern redcedar comprises more than 90% of conifer basal area in 277 counties of the central Great Plains, and thus mapping conifer cover can be assumed to reflect eastern redcedar cover. By applying the LandTrendr algorithm to Landsat seasonal composites we produced stable estimates of eastern redcedar cover from 1984 to 2018 and quantified encroachment as a 2.3% per year increase in eastern redcedar forest, defined as areas with >= 10% redcedar cover. The comparison of these methods and their application through time lays the groundwork for monitoring of redcedar encroachment across the central Great Plains and provides an approach for mapping fractional cover of conifer trees more generally.
机译:在大平原上的东部雷丁达(Juniperus Viriperus Viripiana L.)侵入了大平原的侵占,导致生物多样性,水可用性和放牧土地,同时增加了灾难性野火的风险。量化东部红军的当前空间分布可以帮助土地管理努力打击侵占,并随着时间的推移扩展这些信息可以改善我们对侵占模式和驱动程序的理解。我们比较了几种遥感方法来映射百分比对联百分比,以制定一种方法,适用于监测东部的Redcedar侵占大平原以支持管理目标。通过使用归一化返回强度和局部冠层密度的新方法过滤叶片延迟雷达,以除去与落叶树有关的残留点,这使我们能够计算针叶树百分比。然后使用从叶片延迟延迟延迟的针叶树盖的样品用于测试可被动的基于图像的方法,该方法可以在更大的时空范围内施加。基于图像的方法包括应用于非常高分辨率图像和随机森林回归建模的空间小波分析,以及从谷歌地球发动机中产生的Landsat 8和Sentinel-2的预测层,从单个图像,季节复合材料和谐波回归系数产生一年一度的时间序列。空间小波分析提供了高精度(类似于5%RMSE),在针叶树盖小于10%的区域中,但随着观察到的盖子的增加,精度迅速下降,使得该方法具有非常低的总体精度(42.5%RMSE)。 Landsat 8和Sentinel-2的预测因子在针叶树覆盖的型号(9.7至13.3%RMSE)中彼此产生类似的性能,但是来自任一传感器的季节复合材料提供比单个冬季图像或谐波回归系数的使用更高的预测力。根据森林库存和分析计划的最近估计,东方Redcedar在中央大平原的277个县中包含超过90%的针叶树基础区域,因此可以假设映射针叶树覆盖物反射东部的Redcedar覆盖。通过将Landtrendr算法应用于Landsat季节复合材料,我们从1984年到2018年开始稳定的东部Redcedar封面估计,并量化了东部Redcedar森林每年增加2.3%,定义为具有> = 10%的Redcedar封面的区域。这些方法的比较及其施用通过时间为中央大平原进行了监测的基础,并提供了一种更普遍地绘制针叶树树的分数覆盖的方法。

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