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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Using the spatial and spectral precision of satellite imagery to predict wildlife occurrence patterns
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Using the spatial and spectral precision of satellite imagery to predict wildlife occurrence patterns

机译:利用卫星图像的空间和光谱精度来预测野生生物的发生方式

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We investigated the potential of using unclassified spectral data for predicting the distribution of three bird species over a similar to 400,000 ha region of Michigan's Upper Peninsula using Landsat ETM+ imagery and 433 locations sampled for birds through point count surveys. These species, Black-throated Green Warbler, Nashville Warbler, and Ovenbird, were known to be associated with forest understory features during breeding. We examined the influences of varying two spatially explicit classification parameters on prediction accuracy: 1) the window size used to average spectral values in signature creation and 2) the threshold distance required for bird detections to be counted as present. Two accuracy measurements, proportion correctly classified (PCC) and Kappa, of maps predicting species' occurrences were calculated with ground data not used during classification. Maps were validated for all three species with Kappa values >03 and PCC >0.6. However, PCC provided little information other than a summary of sample plot frequencies used to classify species' presence and absence. Comparisons with rule-based maps created using the approach of Gap Analysis showed that spectral information predicted the occurrence of these species that use forest subcanopy components better than could be done using known land cover associations (Kappa values 0.1 to 0.3 higher than Gap Analysis maps). Accuracy statistics for each species were affected in different ways by the detection distance of point count surveys used to stratify plots into presence and absence classes. Moderate-to-large detection distances (100 in and 180 in) best classified maps of Black-throated Green Warbler and Nashville Warbler occurrences, while moderate detection distances (50 in and 100 in), which ignored remote observations, provided the best source of information for classification of Ovenbird occurrence. Window sizes used in signature creation also influenced accuracy statistics but to a lesser extent. Highest Kappa values of majority maps were typically obtained using moderate window sizes of 9 to 13 pixels (0.8 to 1.2 ha), which are representative of the study species territory sizes. The accuracy of wildlife occurrence maps classified from spectral data will therefore differ given the species of interest, the spatial precision of occurrence records used as ground references and the number of pixels included in spectral signatures. For these reasons, a quantitative examination is warranted to determine how subjective decisions made during image classifications affect prediction accuracies. (C) 2005 Elsevier Inc. All rights reserved.
机译:我们使用Landsat ETM +影像和通过点计数调查为鸟类采样的433个位置,调查了使用未分类的光谱数据预测密歇根州上半岛约40万公顷地区三种鸟类分布的潜力。这些物种,黑喉绿莺,纳什维尔莺和烤箱鸟,在繁殖过程中与森林林下特征有关。我们检查了更改两个空间显式分类参数对预测准确性的影响:1)用于在签名创建过程中平均光谱值的窗口大小,以及2)算出鸟类检测所需的阈值距离。使用分类期间未使用的地面数据,计算了预测物种发生的地图的两次准确度测量,即正确分类的比例(PCC)和Kappa。验证了所有三个物种的Kappa值> 03,PCC> 0.6。但是,PCC仅提供了用于对物种存在与不存在进行分类的样地频率摘要的信息很少。与使用差距分析方法创建的基于规则的地图的比较显示,光谱信息比使用已知的土地覆被关联更好地预测了使用森林亚冠层成分的这些物种的发生(卡普值比差距分析地图高0.1至0.3) 。每个物种的准确度统计信息受到点计数调查的检测距离的不同方式的影响,该点数调查用于将样地分层为存在和不存在类别。中等至较大的探测距离(100英寸和180英寸)的最佳分类黑喉绿莺和纳什维尔莺的出现图,而中等探测距离(50英寸和100英寸)则忽略了远程观测,提供了最佳的探测源烤箱鸟发生分类的信息。签名创建中使用的窗口大小也影响准确性统计,但程度较小。大多数地图的最高Kappa值通常使用9至13像素(0.8至1.2公顷)的中等窗口大小来获得,这代表了研究物种的领土大小。因此,考虑到感兴趣的物种,用作地面参考的出现记录的空间精度以及包括在光谱特征中的像素数量,从光谱数据分类的野生生物出现图的准确性将有所不同。由于这些原因,需要进行定量检查以确定图像分类期间做出的主观决定如何影响预测精度。 (C)2005 Elsevier Inc.保留所有权利。

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