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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Multi-sensor data fusion for estimating forest species composition and abundance in northern Minnesota
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Multi-sensor data fusion for estimating forest species composition and abundance in northern Minnesota

机译:多传感器数据融合估计明尼苏达州北部森林物种组成和丰度

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The magnitude, duration, and frequency of forest disturbance caused by the spruce budworm and forest tent caterpillar in northern Minnesota and neighboring Ontario, Canada have increased over the last century due to a shift in forest species composition linked to historical fire suppression, forest management, and pesticide application that has fostered increased dominance of host tree species. Modeling approaches are currently being used to understand and forecast potential management effects in changing insect disturbance trends. However, detailed forest composition data needed for these efforts is often lacking. We used partial least squares (PLS) regression to integrate different combinations of satellite sensor data including Landsat, Radarsat-1, and PALSAR, as well as pixel-wise forest structure information derived from SPOT-5 sensor data (Wolter et al., 2009), to determine the best combination of sensor data for estimating near species-level proportional forest composition (12 types: 10 species and 2 genera). Single-sensor and various multi-sensor PLS models showed distinct species-dependent sensitivities to relative basal area (BA), with Landsat variables showing greatest overall sensitivity. However, best results were achieved using a combination of data from all these sensors, with several C-band (Radarsat-1) and L-band (PALSAR) variables showing sensitivity to the composition and abundance of specific species. Pixel-level forest structure estimates derived from SPOT-5 data were generally more sensitive to conifer species abundance (especially white pine) than to hardwood species composition. Relative BA models accounted for 68% (jack pine) to 98% (maple spp.) of the variation in ground data with RMSE values between 2.46% and 5.65% relative BA, respectively. Receiver operating characteristic (ROC) curves were used to determine the effective lower limits of usefulness of species relative BA estimates which ranged from 5.94% (jack pine) to 39.41% (black ash). These estimates were then used to produce a dominant forest species map for the study region with an overall accuracy of 78%. Most notably, this approach facilitated discrimination of aspen from paper birch as well as spruce and fir from other conifer species which is crucial for the study of forest tent caterpillar and spruce budworm dynamics in the Upper Midwest. We also demonstrate that PLS regression is an effective data fusion strategy for mapping composition of heterogeneous forests using satellite sensor data.
机译:在上个世纪,由于与历史上的灭火,森林管理,森林砍伐和森林砍伐有关的森林物种组成的变化,由明尼苏达州北部和加拿大安大略省附近的云杉芽虫和森林帐篷毛毛虫引起的森林干扰的程度,持续时间和发生频率有所增加。农药的使用增加了寄主树种的优势。目前正在使用建模方法来理解和预测在改变昆虫干扰趋势中的潜在管理效果。但是,通常缺少这些工作所需的详细森林组成数据。我们使用偏最小二乘(PLS)回归来整合包括Landsat,Radarsat-1和PALSAR在内的卫星传感器数据的不同组合,以及从SPOT-5传感器数据得出的逐像素森林结构信息(Wolter等人,2009年),以确定传感器数据的最佳组合,以估算接近物种级别的比例森林组成(12种:10种和2属)。单传感器和各种多传感器PLS模型显示出不同的物种对相对基底面积(BA)的敏感性,而Landsat变量显示出最大的总体敏感性。但是,将所有这些传感器的数据组合在一起可获得最佳结果,其中几个C波段(Radarsat-1)和L波段(PALSAR)变量显示了对特定物种的组成和丰度的敏感性。从SPOT-5数据得出的像素级森林结构估计值通常对针叶树物种丰富度(尤其是白松树)比对硬木物种组成更敏感。相对BA模型占地面数据变化的68%(千斤顶松木)至98%(枫木树),RMSE值分别在相对BA的2.46%和5.65%之间。接收者操作特性(ROC)曲线用于确定相对BA估计的物种有用性的有效下限,范围从5.94%(顶松)到39.41%(黑灰)。然后,将这些估计值用于生成研究区域的优势森林树种图,总体准确性为78%。最值得注意的是,这种方法有助于区分白桦与白桦以及其他针叶树种的云杉和冷杉,这对于研究中西部上层的森林帐篷毛毛虫和云杉芽虫的动态至关重要。我们还证明了PLS回归是一种使用卫星传感器数据绘制异种森林组成的有效数据融合策略。

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