首页> 外文期刊>International journal of applied earth observation and geoinformation >Ultra-high spatial resolution fractional vegetation cover from unmanned aerial multispectral imagery
【24h】

Ultra-high spatial resolution fractional vegetation cover from unmanned aerial multispectral imagery

机译:来自无人空中多光谱图像的超高空间分辨率分数植被覆盖

获取原文
获取原文并翻译 | 示例
           

摘要

Vegetation cover is a key environmental variable often mapped from satellite and aerial imagery. The derivation of ultra-high spatial resolution fractional vegetation cover (FVC) based on multispectral imagery acquired from an Unmanned Aerial System (UAS) has several applications, including the potential to revolutionise the collection of field data for calibration/validation of satellite products. In this study, abundance maps were derived using three methods, applied to data collected in a typical Australian rangeland environment. The first method used downscaling between Landsat FVC maps and UAS images with Random Forest regression to predict bare ground, photosynthetic vegetation and non-photosynthetic vegetation cover. The second method used spectral unmixing based on endmembers identified in the multispectral imagery. The third method used an object-based classification approach to label image segments. The accuracy of all UAS FVC and Landsat FVC products were assessed using 20 field plots (100 m diameter star transects), as well as from 138 ground photo plots. The classification method performed best for all cover fractions at the 100 m plot scale (12-13% RMSE), with the downscaling approach only able to accurately predict photosynthetic cover. The downscaling and unmixing generally over-predicted non-photosynthetic vegetation associated with Chenopod shrubs. When compared with the high-resolution photo plot data, the classification method performed the worst, while the downscaling and unmixing methods achieved reasonable accuracy for the photosynthetic component only (12-13% RMSE). Multispectral UAS imagery has great potential for mapping photosynthetic vegetation cover in rangelands at ultra-high resolution, though accurately separating non-photosynthetic vegetation and bare ground was only possible when the data was scaled-up to coarser resolutions.
机译:植被覆盖是一个主要的环境变量,经常从卫星和空中图像映射。基于无人机系统(UAS)获取的多光谱图像的超高空间分辨率分数植被覆盖(FVC)具有若干应用,包括旋转卫星产品校准/验证现场数据集合的可能性。在这项研究中,使用三种方法来得出丰富的地图,应用于典型的澳大利亚牧场环境中收集的数据。利用随机森林回归的Landsat FVC地图和UA图像之间使用的第一种方法,以预测裸地,光合植被和非光合植被覆盖。第二种方法使用基于多光谱图像中识别的终点的光谱解密。第三种方法使用基于对象的分类方法来标记图像段。使用20场绘图(100米直径的Star Transcers)以及138个接地光图评估所有UAS FVC和Landsat FVC产品的准确性。分类方法最适合于100M绘制尺度(12-13%RMSE)的所有覆盖级分,其中缩小方法只能准确地预测光合覆盖。令人透露和解密的通常过度预测与切面板灌木相关的非光合植被。与高分辨率光绘制数据相比,分类方法执行了最坏的情况,而较低的尺寸和解密方法仅对光合组分(12-13%RMSE)实现了合理的准确性。 MultiSpectral UAS图像具有超高分辨率的牧场绘制光合植被覆盖的巨大潜力,尽管只有在数据被缩放到粗糙分辨率时才可以准确地分离非光合植被和裸露的地面。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号