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Application of multi-scale spatial and spectral analysis for predicting primate occurrence and habitat associations in Kibale National Park, Uganda

机译:多尺度空间和光谱分析在预测乌干达基巴莱国家公园灵长类动物发生和栖息地关联中的应用

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Remote sensing has made important contributions to biodiversity conservation planning through the measurement of deforestation rates, habitat fragmentation, habitat degradation, and isolation of protected areas in human altered landscapes. Progress in using remote sensing together with field data for the development of robust habitat suitability models has been more modest. In this paper, we present a habitat suitability model developed by relating field data on habitat characteristics and habitat selection of a medium-sized primate (redtail monkey, Cercopithecus ascanius) with a small home range (in contrast to many studies that focus on large-bodied, wide-ranging animals) to satellite-derived data, for predicting animal occurrence. We examined the relative performance of two high-resolution satellite sensors (2.5 m resolution Quickbird and 30 m resolution Landsat ETM+) in capturing patterns of habitat selection by redtail monkeys in Kibale National Park. Overall, our analyses suggest that a model combining data from both the Quickbird and ETM+ sensors predicts monkey presence-absence best, and that, individually, ETM+ data are better predictors than Quickbird data. Moreover, model fit was best at larger scales (ETM+ 120 m, 150 m and 240 m pixels). These results have important implications for future habitat modeling, biodiversity analyses and conservation studies given Landsat's temporal and spatial resolutions, long history of use, relatively well-developed methods for processing and analysis, and relatively low cost in comparison with many higher resolution sensors. (C) 2008 Elsevier Inc. All rights reserved.
机译:遥感通过测量森林砍伐率,生境破碎化,生境退化以及人为改变景观中保护区的隔离,为生物多样性保护规划做出了重要贡献。在使用遥感技术与现场数据一起开发健壮的生境适应性模型方面,进展较为缓慢。在本文中,我们提出了一种栖息地适应性模型,该模型是通过将野外范围较小的中型灵长类动物(红尾猴,Cercopithecus ascanius)的栖息地特征和栖息地选择相关的野外数据相关联而开发的(与许多专注于大型体型广泛的动物)到卫星衍生数据,以预测动物的出现。我们检查了两个高分辨率卫星传感器(2.5 m分辨率的Quickbird和30 m分辨率的Landsat ETM +)在捕获基巴莱国家公园的红尾猴选择栖息地的模式方面的相对性能。总体而言,我们的分析表明,结合来自Quickbird和ETM +传感器的数据的模型可以最好地预测猴子的不在场情况,而且单独来看,ETM +数据比Quickbird数据更好。此外,模型拟合在较大规模(ETM + 120 m,150 m和240 m像素)时效果最佳。与Landsat的时间和空间分辨率,悠久的使用历史,相对成熟的处理和分析方法以及与许多高分辨率传感器相比相对较低的成本相比,这些结果对未来的栖息地建模,生物多样性分析和保护研究具有重要意义。 (C)2008 Elsevier Inc.保留所有权利。

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