首页> 外文会议>2011 IEEE International Geoscience Remote Sensing Symposium >Use of high-resolution multispectral imagery acquired with an autonomous unmanned aerial vehicle to quantify the spread of an invasive wetlands species
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Use of high-resolution multispectral imagery acquired with an autonomous unmanned aerial vehicle to quantify the spread of an invasive wetlands species

机译:使用自动无人驾驶飞机获取的高分辨率多光谱图像量化入侵性湿地物种的扩散

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Management of wetlands resources often requires assessment of changes in wetland vegetation over time. Accurate tracking of the expansion or retraction of invasive plant species is especially critical for natural resource managers who must make decisions on the deployment of effective control measures. Many available remote sensing strategies to quantify the location of invasive plant species are either too expensive to deploy on a regular basis or lack sufficient geographic or temporal resolution to be of use to resources managers. This paper presents the results of the use of a new unmanned aerial vehicle platform, called AggieAir™, and a new classification algorithm to track the spread of an invasive grass species, Phragmites australis, in a large and important wetland in northern Utah. The combination of high resolution multi-spectral images (in space and time) and the classification algorithm based on advances in statistical learning theory produce quantitative land cover descriptions that identify Phragmites locations with an accuracy of 95 percent. The combination of these two tools provides wetlands managers with new and potentially valuable methods to quantify the spread of Phragmites and to evaluate the efficacy of their attempts to control it.
机译:湿地资源的管理通常需要评估湿地植被随时间的变化。对于必须对有效控制措施的部署做出决定的自然资源管理者而言,准确跟踪入侵植物物种的扩张或缩回尤其重要。用于量化入侵植物物种位置的许多可用遥感策略要么太昂贵而无法定期部署,要么缺乏足够的地理或时间分辨率以致于资源管理者无法使用。本文介绍了使用一种名为AggieAir™的新型无人机平台以及一种新的分类算法来跟踪在犹他州北部一个重要的大型湿地中入侵性草种Phragmites australis的扩散的结果。高分辨率多光谱图像(在空间和时间上)与基于统计学习理论进展的分类算法相结合,可产生定量的土地覆盖描述,以95%的精度识别芦苇的位置。这两种工具的结合为湿地管理者提供了新的,可能具有潜在价值的方法,可以量化芦苇的扩散并评估其防治效果。

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