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A semi-automated approach to classify and map ecological zones across the dune-beach interface

机译:一种半自动化的方法来对沙丘-海滩界面上的生态区进行分类和绘制地图

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摘要

Habitat classification and mapping underpins most conservation and management tools, because habitats are often used as a surrogate for all biodiversity. Some habitat boundaries are easy to delineate; however, sandy shores are ecotones or ecoclines given their dynamic interface between the marine and the terrestrial realms. Although methods for mapping habitats along shorelines have been broadly applied, we aim to test a semiautomated approach to mapping across-shore "sub-environments" in this transition zone at a finer scale. Using an empirical dataset of photographs covering a small area (three across-shore transects from each of two different areas) with a high resolution, we tested seven machine learning algorithms to determine which one had the best classification accuracy, and to identify which environmental variables are the main determinants of classifications. The randomForest, stochastic gradient boosting, and C5.0 algorithms most accurately classified the photographs as the correct sub-environment. Based on the randomForest algorithm, the variables entropy, drift cover rate, local slope, segmented vegetation cover and number of points with sand or marine litter had the highest influence on the classification. There was no sensitivity to spatial variation alongshore. This approach can be used to map sub-environments at larger scales using drone technology to capture georeferenced digital photographs systematically. Consequently, coastal habitats can be mapped at a finer scale without causing disturbance to this especially sensitive ecotone.
机译:栖息地分类和制图是大多数保护和管理工具的基础,因为栖息地通常被用作所有生物多样性的替代品。一些栖息地边界很容易划定;但是,由于沙质海岸是海洋和陆地领域之间的动态界面,因此它们是过渡带或生态梯系。尽管沿海岸线绘制栖息地的方法已得到广泛应用,但我们的目标是测试一种半自动方法,以更精细的比例绘制此过渡带中的跨岸“子环境”的地图。使用涵盖小区域(两个不同区域中的每个区域的三个跨岸样线)的高分辨率照片的经验数据集,我们测试了七种机器学习算法,以确定哪种算法具有最佳分类精度,并确定哪些环境变量是分类的主要决定因素。 randomForest,随机梯度增强和C5.0算法最准确地将照片分类为正确的子环境。基于randomForest算法,变量熵,漂移覆盖率,局部坡度,分段植被覆盖以及带有沙子或海洋垃圾的点数对分类的影响最大。对沿岸的空间变化不敏感。该方法可用于使用无人机技术在更大范围内绘制子环境的地图,以系统地捕获地理参考的数码照片。因此,可以在不对这一特别敏感的过渡带造成干扰的情况下,以更精细的比例绘制沿海生境。

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