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Integration of ground survey and remote sensing derived data: Producing robust indicators of habitat extent and condition

机译:地面调查和遥感数据的整合:产生强大的栖息地范围和状况指标

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The availability of suitable habitat is a key predictor of the changing status of biodiversity. Quantifying habitat availability over large spatial scales is, however, challenging. Although remote sensing techniques have high spatial coverage, there is uncertainty associated with these estimates due to errors in classification. Alternatively, the extent of habitats can be estimated from ground‐based field survey. Financial and logistical constraints mean that on‐the‐ground surveys have much lower coverage, but they can produce much higher quality estimates of habitat extent in the areas that are surveyed. Here, we demonstrate a new combined model which uses both types of data to produce unified national estimates of the extent of four key habitats across Great Britain based on Countryside Survey and Land Cover Map. This approach considers that the true proportion of habitat per km 2 ( Z i ) is unobserved, but both ground survey and remote sensing can be used to estimate Z i . The model allows the relationship between remote sensing data and Z i to be spatially biased while ground survey is assumed to be unbiased. Taking a statistical model‐based approach to integrating field survey and remote sensing data allows for information on bias and precision to be captured and propagated such that estimates produced and parameters estimated are robust and interpretable. A simulation study shows that the combined model should perform best when error in the ground survey data is low. We use repeat surveys to parameterize the variance of ground survey data and demonstrate that error in this data source is small. The model produced revised national estimates of broadleaved woodland, arable land, bog, and fen, marsh and swamp extent across Britain in 2007.
机译:合适的栖息地的可用性是生物多样性状况变化的关键预测指标。然而,在大空间尺度上量化栖息地的可用性是具有挑战性的。尽管遥感技术具有较高的空间覆盖率,但由于分类错误,与这些估计有关的不确定性。另外,可以从地面实地调查中估算栖息地的范围。财务和后勤方面的限制意味着实地调查的覆盖范围要低得多,但是它们可以对被调查地区的栖息地范围产生更高质量的估计。在这里,我们展示了一个新的组合模型,该模型使用两种类型的数据,基于“乡村调查”和“土地覆盖图”对英国四个主要生境的范围进行了统一的国家估算。该方法认为未观察到每平方公里2(Z i)的真实栖息地比例,但是地面测量和遥感都可以用来估算Z i。该模型允许遥感数据和Z i之间的关系在空间上有偏见,而地面调查被假定为无偏见。采用基于统计模型的方法来集成野外调查和遥感数据,可以捕获和传播有关偏差和精度的信息,以使所产生的估计值和估计的参数是可靠且可解释的。仿真研究表明,当地面勘测数据的误差较小时,组合模型应表现最佳。我们使用重复调查来参数化地面调查数据的方差,并证明该数据源中的误差很小。该模型在2007年对英国的阔叶林地,耕地,沼泽以及g,沼泽和沼泽地带进行了修订后的国家估算。

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