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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Integrating multi-sensor remote sensing and species distribution modeling to map the spread of emerging forest disease and tree mortality
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Integrating multi-sensor remote sensing and species distribution modeling to map the spread of emerging forest disease and tree mortality

机译:集成多传感器遥感和物种分布建模,以映射新兴森林疾病和树死亡率的传播

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Forest ecosystems have been increasingly affected by a variety of disturbances, including emerging infectious diseases (ElDs), causing extensive tree mortality in the Western United States. Especially over the past decade, EID outbreaks occurred more frequently and severely in forest landscapes, which have killed large numbers of trees. While tree mortality is observable from remote sensing, its symptom may be associated with both disease and non-disease disturbances (e.g., wildfire and drought). Species distribution modeling is widely used to understand species spatial preferences for certain habitat conditions, which may constrain uncertain remote sensing approaches due to limited spatial and spectral resolution. In this study, we integrated multi-sensor remote sensing and species distribution modeling to map disease-caused tree mortality in a forested area of 80,000 ha from 2005 to 2016. We selected sudden oak death (caused by pathogen P. ramorum) as a case study of a rapidly spreading emerging infectious disease, which has killed millions of oak (Quercus spp.) and tanoak (Lithocarpus densifiorus) in California over the past decades. To balance the needs for fine-scale monitoring of disease distribution patterns and satisfactory coverage at broad scales, our method applied spectral unmixing to extract sub-pixel disease presence using yearly Landsat time series. The results were improved by employing the probability of disease infection generated from a species distribution model. We calibrated and validated the method with image samples from high-spatial resolution NAIP (National Agriculture Imagery Program), and hyperspectral AVIRIS (Airborne Visible/Infrared Imaging Spectrometer) sensors, Google Earth (R) imagery, and field observations. The findings reveal an annual sudden oak death infection rate of 7% from 2005 to 2016, with overall mapping accuracies ranging from 76% to 83%. The integration of multi-sensor remote sensing and species distribution modeling co
机译:森林生态系统越来越受到各种紊乱的影响,包括新出现的传染病(ELDS),导致美国西部的广泛的树死亡率。特别是在过去十年中,EID爆发在森林景观中发生了更频繁和严重的爆发,这杀死了大量的树木。虽然从遥感中可观察到树死亡率,但其症状可能与疾病和非疾病干扰(例如,野火和干旱)有关。物种分布建模广泛用于理解某些栖息地条件的物种空间偏好,这可能会限制由于空间和光谱分辨率有限而不确定的遥感方法。在这项研究中,我们集成了多传感器遥感和物种分布模型,从2005年到2016年造成80,000公顷的森林面积导致的疾病导致的树质死亡率。我们选择了突发的橡木死亡(由病原体P. Ramorum引起的)作为一个案例在过去的几十年里,在加利福尼亚州迅速传播新兴的新兴传染病,杀死了数百万橡木(栎属SPP。)和Tanoak(Lithocarpus densifiorus)。为了平衡疾病分布模式的细尺监测需求和广泛的尺度令人满意的覆盖,我们的方法应用光谱解密,使用年度LANDSAT时间序列提取子像素疾病的存在。通过使用从物种分布模型产生的疾病感染概率来改善结果。我们校准并验证了具有来自高空间分辨率Naip(国家农业图像)的图像样本的方法,以及高光谱的Aviris(空中可见/红外成像光谱仪)传感器,谷歌地球(R)图像和现场观察。结果表明,2005年至2016年年度突发的橡木死亡感染率为7%,整体映射精度范围从76%到83%。多传感器遥感和物种分布建模有限公司集成

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