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Burned forest characterization at single-tree level with airborne laser scanning for assessing wildlife habitat

机译:利用机载激光扫描仪评估单树水平的烧毁森林,以评估野生动植物的栖息地

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Abundance, size, and spatial distribution of standing dead trees (snags), are key indicators of forest biodiversity and ecosystem health. These metrics represent critical habitat components for various wildlife species of conservation concern, including the Black-backed Woodpecker (Picoides arcticus), which is strongly associated with recently burned conifer forest. We assessed the potential of Airborne Laser Scanning (ALS) to detect and characterize conifer snags and identify Black-backed Woodpecker habitat using previously derived empirical thresholds of conifer snag basal area. Over the footprint of the Rim Fire, a megafire that extended (similar to 104,000 ha) through a heterogeneous mosaic of conifer forests, oak woodlands, and meadows in the Sierra Nevada mountains of California, we identified conifer snags and estimated their basal area from single-tree ALS-derived metrics using Gaussian processes in four major steps. First, individual trees were mapped using the Watershed Segmentation algorithm, resulting in 87% detection of trees with stem diameter larger than 30 cm. Second, the snag/live classification model identified snags with an overall accuracy of 91.8%, using the coefficient of variation of height and intensity together with maximum intensity and fractional cover as the most relevant metrics. Third, the conifer/hardwood snag classification model utilizing the maximum height, median height, minimum intensity, and area metrics separated snag forest types with an overall accuracy of 84.8%. Finally, a Gaussian process regression model reliably estimated conifer snag stem diameter (R-2 = 0.81) using height and crown area, thus significantly outperforming regionally calibrated conifer-specific allometric equations. As a result,-80% of the snag basal area have been mapped. Optimal and potential habitat for Black-backed Woodpecker comprise 53.7 km(2) and 58.4 km(2), respectively, representing 5.1 and 5.6% of the footprint of the Rim Fire. Our study illustrates the utility of high-density ALS data for characterizing recently burned forests, which, in conjunction with information about the habitat needs of particular snag-dependent wildlife species, can be used to assess habitat characteristics, and thus contribute greatly to forest management and biodiversity conservation. (c) 2016 Elsevier Inc. All rights reserved.
机译:枯死树木的数量,大小和空间分布是森林生物多样性和生态系统健康的关键指标。这些指标代表了各种需要保护的野生动植物物种的关键栖息地组成部分,其中包括黑背啄木鸟(Picoides arcticus),该树与最近被烧毁的针叶林密切相关。我们评估了机载激光扫描(ALS)的潜力,可以使用先前得出的针叶树粗枝根基面积经验阈值来检测和表征针叶树粗枝根并鉴定黑背啄木鸟栖息地。在环火的足迹上,一场大火通过加利福尼亚内华达山脉的针叶林,橡树林和草地的异质马赛克扩展(大约104,000公顷),我们确定了针叶树障碍物,并根据单个树估计了它们的基础面积在四个主要步骤中使用高斯过程对ALS衍生的树进行度量。首先,使用分水岭分割算法对单个树木进行地图绘制,从而导致茎直径大于30厘米的树木的检出率为87%。其次,障碍物/实时分类模型使用高度和强度的变化系数以及最大强度和覆盖率作为最相关的指标,以91.8%的总精度识别障碍物。第三,针叶树/硬木粗枝分类模型利用最大高度,中位数高度,最小强度和面积度量来分离粗枝林类型,总体精度为84.8%。最后,一个高斯过程回归模型使用高度和树冠面积可靠地估算了针叶树粗茎直径(R-2 = 0.81),从而大大胜过了区域校准的针叶树特定测斜方程。结果,已绘制出-80%的断枝基础区域。黑背啄木鸟的最佳栖息地和潜在栖息地分别占53.7 km(2)和58.4 km(2),分别占Rim Fire足迹的5.1和5.6%。我们的研究表明,高密度ALS数据可用于表征最近被烧毁的森林,该数据与有关特定依赖障碍物的野生生物的栖息地需求信息一起,可用于评估栖息地特征,从而为森林管理做出巨大贡献和生物多样性保护。 (c)2016 Elsevier Inc.保留所有权利。

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