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Modelling and mapping potential hooded warbler (Wilsonia citrina) habitat using remotely sensed imagery

机译:使用遥感图像对潜在的带帽莺(Wilsonia citrina)栖息地进行建模和制图

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Modelling and mapping of hooded warbler (Wilsonia citrina) nesting habitat in forests of southern Ontario were conducted using Ikonos and Landsat data. The study began with an analysis of skyward hemispherical photography to determine canopy characteristics associated with nest sites. It showed that nest sites had significantly less overhead canopy cover and larger maximum gap size than in non-nest areas. These findings led to the hypothesis that brightness variability in high to moderate resolution remotely sensed imagery may be greater at nest sites than in non-nest areas due to larger shadows and greater shadow variability related to these gap characteristics. This was confirmed when, in addition to some spectral band brightness variables, several image texture and spectrally unmixed fraction (shadow, bare soil) variables were found to be significantly different for nest and non-nest sites in Ikonos and Landsat imagery. These significantly different variables were used in maximum likelihood classification (MLC) and logistic regression (LR) to produce maps of potential nesting habitat. Mapping was conducted with Ikonos and Landsat in a local area where most known nest sites occur, and regionally using Landsat data for almost all of the hooded warbler range in southern Ontario. For the local area mapping using Ikonos data, a posteriori probabilities for both the MLC and LR methods showed that about 62% of the nest sites set aside for validation had been classified with high probability (p > 0.70) in the nest class. MLC mapping accuracy was 70% for the validation nest sites and 87% of validation nest sites were within 10 in of classified nesting habitat, a distance approximately equivalent to expected positional error in the data. LR accuracy was slightly lower. Nest site MLC mapping accuracy in the local area using Landsat data was 87% but the map was much coarser due to the larger pixel size. Regional mapping with Landsat imagery produced lower classification accuracy due to high errors of commission for the habitat class. This resulted from a poor spatial distribution and low number of observations of nest sites throughout the region compared to the local area, while the non-nest site data distribution was too narrow, having been defined and assessed (using standard accepted methods) as areas with no ground shrubs. If either of these problems can be ameliorated, regional mapping accuracy may improve. (c) 2006 Elsevier Inc. All rights reserved.
机译:使用Ikonos和Landsat数据,对安大略省南部森林中的带帽莺(Wilsonia citrina)巢生境进行了建模和制图。该研究开始于对上半球摄影进行分析,以确定与巢穴相关的树冠特征。结果表明,与非巢穴地区相比,巢穴的架空冠层覆盖量明显减少,最大缝隙面积更大。这些发现导致了这样一个假设:由于与这些间隙特征相关的阴影和阴影变化较大,因此巢位置的高分辨率到中分辨率遥感影像的亮度变化可能比非巢区域大。在Ikonos和Landsat影像中,除了巢和非巢位置,除了一些光谱带亮度变量之外,还发现一些图像纹理和光谱未混合分数(阴影,裸土)变量显着不同时,这一点得到了证实。这些明显不同的变量用于最大似然分类(MLC)和逻辑回归(LR)中,以产生潜在的筑巢生境图。使用Ikonos和Landsat在最著名的筑巢地点发生的地方进行了制图,并使用Landsat数据对安大略省南部几乎所有带帽莺的范围进行了区域制图。对于使用Ikonos数据进行的局部区域映射,MLC和LR方法的后验概率表明,约有62%的待验证巢位已在巢类中分类为高概率(p> 0.70)。对于验证的巢点,MLC测绘的准确度为70%,而在嵌套的分类栖息地的10英寸范围内,有87%的验证巢点的距离大约等于数据中预期的位置误差。 LR精度略低。使用Landsat数据在本地进行的Nest站点MLC映射精度为87%,但由于像素尺寸较大,地图更加粗糙。由于栖息地类别的佣金较高,使用Landsat影像进行区域制图的分类精度较低。这是由于与区域相比,整个区域的空间分布较差,且观察到的巢穴数量较少,而非巢穴的数据分布过于狭窄,已被定义和评估(使用标准接受的方法)为没有地面灌木。如果这些问题中的任何一个都可以得到改善,则可以提高区域地图的准确性。 (c)2006 Elsevier Inc.保留所有权利。

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