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Predicting species diversity in agricultural environments using Landsat TM imagery

机译:使用Landsat TM影像预测农业环境中的物种多样性

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Maps based on classified Earth observation (EO) imagery have been used to model biodiversity, but errors associated with the classification process itself and the resulting discretization of land covermay ultimately limit such efforts. Among other issues, discrete land cover maps can often be costly to produce and validate. Alternatively, the original continuous spectral information in EO imagery can be used. The primary objective of this study was to compare predictors based on continuous and discrete information derived from Landsat TM imagery for modeling biodiversity in agricultural landscapes. In 46 landscapes throughout Eastern Ontario, Canada, landscape metrics (mean field size, the percentage of landscape in agriculture, and crop diversity) derived from a discrete image classification, along with several measures of crop productivity based on the continuous Normalized Difference Vegetation Index (NDVI), were used as predictors of field-based measures of species diversity for birds, butterflies, and plants. Using an Information-Theoretic approach for model-averaging and inference, we compared and interpreted the magnitude and direction of model-averaged coefficients, model evidence ratios, and overall fit of model-averaged predictions. Our findings indicate that when using Landsat TM imagery in agricultural environments, models using predictors derived from continuous information consistently outranked models based on discrete information derived from classified imagery.
机译:基于分类的地球观测(EO)图像的地图已用于对生物多样性进行建模,但是与分类过程本身相关的错误以及由此造成的土地覆盖离散化最终可能会限制这种工作。除其他问题外,离散的土地覆盖图通常制作和验证成本高昂。或者,可以使用EO图像中的原始连续光谱信息。这项研究的主要目的是比较基于Landsat TM影像得出的连续和离散信息的预测因子,以对农业景观中的生物多样性进行建模。在加拿大东部安大略省的46个景观中,景观指标(平均田间面积,农业中的景观百分比和作物多样性)源自离散的图像分类,以及基于连续归一化植被指数的几种作物生产力量度( NDVI)被用作基于鸟类,蝴蝶和植物物种多样性的野外测量指标。使用信息理论方法进行模型平均和推理,我们比较并解释了模型平均系数的大小和方向,模型证据比率以及模型平均预测的总体拟合度。我们的发现表明,在农业环境中使用Landsat TM影像时,使用基于连续信息得出的预测变量的模型始终优于基于分类影像得出的离散信息的模型。

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