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Seagrass resource assessment using remote sensing methods in St. Joseph Sound and Clearwater Harbor, Florida, USA

机译:美国佛罗里达州圣约瑟夫海湾和克利尔沃特海港使用遥感方法进行海草资源评估

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摘要

In the event of a natural or anthropogenic disturbance, environmental resource managers require a reliable tool to quickly assess the spatial extent of potential damage to the sea-grass resource. The temporal availability of the Landsat 5 Thematic Mapper (TM) imagery provided a suitable option to detect and assess damage of the submerged aquatic vegetation (SAV). This study examined Landsat TM imagery classification techniques to create two-class (SAV presence/absence) and three-class (SAV estimated coverage) SAV maps of the seagrass resource. The Mahalanobis Distance method achieved the highest overall accuracy (86%) and validation accuracy (68%) for delineating the seagrass resource (two-class SAV map). The Maximum Likelihood method achieved the highest overall accuracy (74%) and validation accuracy (70%) for delineating the seagrass resource three-class SAV map. The Landsat 5 TM imagery classification provided a seagrass resource map product with similar accuracy to the aerial pho- tointerpretation maps (validation accuracy 71%). The results support the application of remote sensing methods to analyze the spatial extent of the seagrass resource.
机译:在自然或人为干扰的情况下,环境资源管理人员需要一种可靠的工具来快速评估对海草资源潜在破坏的空间范围。 Landsat 5专题测绘仪(TM)影像的时间可用性为检测和评估水下水生植物(SAV)的破坏提供了一个合适的选择。这项研究检查了Landsat TM影像分类技术,以创建海草资源的两类(SAV存在/不存在)和三类(SAV估计覆盖率)SAV地图。马哈拉诺比斯距离方法在描绘海草资源(两类SAV图)方面达到了最高的总体准确度(86%)和验证准确度(68%)。最大似然法在描绘海草资源三级SAV图时实现了最高的总体准确性(74%)和验证准确性(70%)。 Landsat 5 TM影像分类提供了海草资源地图产品,其准确性与航空照片解释地图相似(验证准确性为71%)。结果支持遥感方法的应用分析海草资源的空间范围。

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