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Assessing species distribution using Google Street View: A pilot study with the pine processionary moth

机译:使用Google Street View评估物种分布:使用松树前进蛾进行的初步研究

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摘要

Mapping species spatial distribution using spatial inference and prediction requires a lot of data. Occurrence data are generally not easily available from the literature and are very time-consuming to collect in the field. For that reason, we designed a survey to explore to which extent large-scale databases such as Google maps and Google street view could be used to derive valid occurrence data. We worked with the Pine Processionary Moth (PPM) Thaumetopoea pityocampa because the larvae of that moth build silk nests that are easily visible. The presence of the species at one location can therefore be inferred from visual records derived from the panoramic views available from Google street view. We designed a standardized procedure allowing evaluating the presence of the PPM on a sampling grid covering the landscape under study. The outputs were compared to field data. We investigated two landscapes using grids of different extent and mesh size. Data derived from Google street view were highly similar to field data in the large-scale analysis based on a square grid with a mesh of 16 km (96% of matching records). Using a 2 km mesh size led to a strong divergence between field and Google-derived data (46% of matching records). We conclude that Google database might provide useful occurrence data for mapping the distribution of species which presence can be visually evaluated such as the PPM. However, the accuracy of the output strongly depends on the spatial scales considered and on the sampling grid used. Other factors such as the coverage of Google street view network with regards to sampling grid size and the spatial distribution of host trees with regards to road network may also be determinant.
机译:使用空间推断和预测来映射物种空间分布需要大量数据。发生数据通常不容易从文献中获得,并且在现场收集非常耗时。因此,我们设计了一项调查,以探索可以在多大程度上使用大型数据库(例如Google地图和Google街景视图)来导出有效的发生数据。我们与松树蛾(PPM)Thaumetopoea pityocampa一起工作,是因为该蛾的幼虫建立了容易看见的丝巢。因此,可以根据从Google街景视图中获得的全景图得出的视觉记录来推断该物种在一个位置上的存在。我们设计了一种标准化程序,可以评估覆盖被研究景观的采样网格上PPM的存在。将输出与现场数据进行比较。我们使用不同程度和网格尺寸的网格调查了两个景观。从Google街景获得的数据与大规模分析中的现场数据高度相似,大规模分析基于具有16 km(匹配记录的96%)的网格的正方形网格。使用2 km的网格大小会导致字段数据和Google衍生数据之间的巨大差异(匹配记录的46%)。我们得出的结论是,谷歌数据库可能会提供有用的发生数据,以映射物种的分布,可以通过视觉评估存在的物种,例如PPM。但是,输出的精度在很大程度上取决于所考虑的空间尺度和所使用的采样网格。其他因素(例如关于采样网格大小的Google街景网络的覆盖范围以及关于道路网络的宿主树的空间分布)也可能是决定因素。

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