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首页> 外文期刊>Estuarine Coastal and Shelf Science >Comparing random forests and convoluted neural networks for mapping ghost crab burrows using imagery from an unmanned aerial vehicle
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Comparing random forests and convoluted neural networks for mapping ghost crab burrows using imagery from an unmanned aerial vehicle

机译:将随机森林和卷积神经网络进行覆盖鬼蟹洞穴,使用无人驾驶飞行器的图像

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摘要

Sandy beaches are important ecosystems that line a third of the world's ice-free coastlines. Unfortunately, these environments and the life they support are often threatened by various anthropogenic and natural factors. Monitoring sandy beach health is important to aid in appropriate management decisions. One such method of quantifying environmental health is using bioindicators. Ghost crabs are a commonly used sandy beach bioindicator. Current techniques for assessing ghost crab abundance and distribution data involve manually counting each individual burrow opening, which can intrusive and timely for a large area. The aim of this study was to assesses the use of imagery from an unmanned aerial vehicle and machine-learning algorithms as an alternative approach to monitoring ghost crab burrows. The accuracy and transferability of random forest (RF) and convolutional neural networks (CNN) classifiers within an Object-Based Image Analysis (OBIA) framework were tested using hyper-resolution (0.04 m) orthomosaics from four different dates. CNN was a more robust classifier with higher accuracies (max F-score 0.84). Transferability of rule sets and models was limited for both classifiers, particularly when applied to sub-optimal imagery. Overall, we present a feasible workflow that provides ecologist and environmental managers with a cost-effective and less invasive alternative to mapping ghost crab burrows.
机译:沙滩是重要的生态系统,这是世界上三分之一的无冰海岸线。不幸的是,这些环境和他们支持的生活往往受到各种人类和自然因素的威胁。监测沙滩健康对于援助适当的管理决策非常重要。一种量化环境健康的方法使用生物indicer。幽灵螃蟹是一个常用的沙滩生物indicator。用于评估鬼魂螃蟹丰富和分销数据的当前技术涉及手动计数每个洞穴开口,这可以对大面积侵入和及时。本研究的目的是评估从无人驾驶飞行器和机器学习算法的图像的使用作为监测鬼蟹洞穴的替代方法。随机森林(RF)和卷积神经网络(CNN)分类器在基于对象的图像分析(OBN)框架内的准确性和可转换性使用来自四个不同日期的超分辨率(0.04米)的正门测试进行了测试。 CNN是一种更强大的分类器,具有更高的精度(最大F-Score 0.84)。对于两个分类器,规则集和模型的可转换性限于应用于次优图像时。总的来说,我们提出了一种可行的工作流程,提供生态学家和环境管理人员,具有成本效益和更少的侵入性替代品来映射鬼魂螃蟹洞穴。

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