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Monitoring the invasion of Phragmites australis in coastal marshes of Louisiana, USA, using multi-source remote sensing data

机译:使用多源遥感数据监测美国路易斯安那州沿海沼泽中芦苇的入侵

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Phragmites australis a native marshland species to the North American Atlantic Coast is presently expanding to new habitats at very high rates. To understand the causes and consequences of this invasion, monitoring programs, especially at the Gulf Coast, need to be established. The first step to this is to obtain a method for accurate mapping Phragmites distribution. In this study an object oriented classification approach that combines lidar and multispectral imagery is proposed. After segmentation of a dataset of three multispectral bands plus a lidar based digital surface model, two classification methods were explored: a class assignment (CA) and a nearest neighbor classification (NNC). CA requires more involvement and knowledge form the analyst, but the decisions to be made are better understood than in the NNC. Both methods performed similarly, and were able to map most of the Phragmites present in the study area. Results show that the use of multi-source data not only can produce accurate distribution maps for future monitoring, but also guide on present day surveys and even help in the interpretation of old data to map past conditions.
机译:芦苇是北美大西洋沿岸的原生沼泽物种,目前正以极高的速度扩展到新的栖息地。为了了解这种入侵的原因和后果,需要建立监测计划,尤其是在墨西哥湾沿岸。第一步是获得一种准确映射芦苇分布的方法。在这项研究中,提出了一种结合了激光雷达和多光谱图像的面向对象的分类方法。在对三个多光谱波段的数据集加上基于激光雷达的数字表面模型进行分割之后,探索了两种分类方法:类分配(CA)和最近邻分类(NNC)。 CA需要分析人员更多的参与和知识,但是要比NNC更好地理解要做出的决策。两种方法的执行方式相似,并且能够绘制研究区域中存在的大部分芦苇。结果表明,使用多源数据不仅可以生成准确的分布图以用于将来的监视,而且可以指导当前的调查,甚至有助于解释旧数据以映射过去的状况。

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