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Predicting Species Cover of Marine Macrophyte and Invertebrate Species Combining Hyperspectral Remote Sensing Machine Learning and Regression Techniques

机译:结合高光谱遥感机器学习和回归技术预测海洋大型植物和无脊椎动物的种类

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摘要

In order to understand biotic patterns and their changes in nature there is an obvious need for high-quality seamless measurements of such patterns. If remote sensing methods have been applied with reasonable success in terrestrial environment, their use in aquatic ecosystems still remained challenging. In the present study we combined hyperspectral remote sensing and boosted regression tree modelling (BTR), an ensemble method for statistical techniques and machine learning, in order to test their applicability in predicting macrophyte and invertebrate species cover in the optically complex seawater of the Baltic Sea. The BRT technique combined with remote sensing and traditional spatial modelling succeeded in identifying, constructing and testing functionality of abiotic environmental predictors on the coverage of benthic macrophyte and invertebrate species. Our models easily predicted a large quantity of macrophyte and invertebrate species cover and recaptured multitude of interactions between environment and biota indicating a strong potential of the method in the modelling of aquatic species in the large variety of ecosystems.
机译:为了理解生物模式及其在自然界中的变化,显然需要对这些模式进行高质量的无缝测量。如果在陆地环境中成功应用遥感方法,其在水生生态系统中的使用仍然具有挑战性。在本研究中,我们结合了高光谱遥感和增强回归树建模(BTR)(一种用于统计技术和机器学习的集成方法),以测试其在预测波罗的海光学复杂海水中大型植物和无脊椎动物物种盖度中的适用性。 BRT技术与遥感技术和传统空间建模相结合,成功地在底栖大型植物和无脊椎动物物种的覆盖范围内识别,构建和测试了非生物环境预测因子的功能。我们的模型可以轻松预测大量的大型植物和无脊椎动物物种的覆盖,并重新捕获环境与生物区系之间的多种相互作用,这表明该方法在各种生态系统中对水生物种进行建模的强大潜力。

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