首页> 外文期刊>GIScience & remote sensing >Use of principal components of UAV-acquired narrow-band multispectral imagery to map the diverse low stature vegetation fAPAR
【24h】

Use of principal components of UAV-acquired narrow-band multispectral imagery to map the diverse low stature vegetation fAPAR

机译:利用无人机获取的窄带多光谱图像的主要成分来绘制不同的低矮植被fAPAR

获取原文
获取原文并翻译 | 示例

摘要

The fraction of absorbed photosynthetically active radiation (fAPAR) is an important plant physiological index that is used to assess the ability of vegetation to absorb PAR, which is utilized to sequester carbon in the atmosphere. This index is also important for monitoring plant health and productivity, which has been widely used to monitor low stature crops and is a crucial metric for food security assessment. The fAPAR has been commonly correlated with a greenness index derived from spaceborne optical imagery, but the relatively coarse spatial or temporal resolution may prohibit its application on complex land surfaces. In addition, the relationships between fAPAR and remotely sensed greenness data may be influenced by the heterogeneity of canopies. Multispectral and hyperspectral unmanned aerial vehicle (UAV) imaging systems, conversely, can provide several spectral bands at sub-meter resolutions, permitting precise estimation of fAPAR using chemometrics. However, the data pre-processing procedures are cumbersome, which makes large-scale mapping challenging. In this study, we applied a set of well-verified image processing protocols and a chemometric model to a lightweight, frame-based and narrow-band (10 nm) UAV imaging system to estimate the fAPAR over a relatively large cultivated land area with a variety of low stature vegetation of tropical crops along with native and non-native grasses. A principal component regression was applied to 12 bands of spectral reflectance data to minimize the collinearity issue and compress the data variation. Stepwise regression was employed to reduce the data dimensionality, and the first, third and fifth components were selected to estimate the fAPAR. Our results indicate that 77% of the fAPAR variation was explained by the model. All bands that are sensitive to foliar pigment concentrations, canopy structure and/or leaf water content may contribute to the estimation, especially those located close to (720 nm) or within (750 nm and 780 nm) the near-infrared spectral region. This study demonstrates that this narrow-band frame-based UAV system would be useful for vegetation monitoring. With proper pre-flight planning and hardware improvement, the mapping of a narrow-band multispectral UAV system could be comparable to that of a manned aircraft system.
机译:吸收的光合作用活性辐射(fAPAR)的分数是重要的植物生理指标,用于评估植被吸收PAR的能力,该能力可用于隔离大气中的碳。该指标对于监测植物健康和生产力也很重要,该指标已广泛用于监测低矮作物,并且是评估粮食安全的关键指标。 fAPAR通常与源自星载光学影像的绿色指数相关,但是相对粗糙的空间或时间分辨率可能会阻止其在复杂的陆地表面上应用。另外,fAPAR和遥感绿色数据之间的关系可能会受到树冠异质性的影响。相反,多光谱和高光谱无人机(UAV)成像系统可以在亚米级分辨率下提供多个光谱带,从而允许使用化学计量学精确估算fAPAR。但是,数据预处理过程繁琐,这使大规模映射具有挑战性。在这项研究中,我们将一套经过验证的图像处理协议和一个化学计量学模型应用于轻量级,基于帧和窄带(10 nm)的无人机成像系统,以在相对较大的耕地面积上估算fAPAR。热带作物的低矮植被的各种物种,以及本地和非本地的草。将主成分回归应用于光谱反射率数据的12个波段,以最大程度地减少共线性问题并压缩数据变化。采用逐步回归来减少数据维数,并选择第一,第三和第五个分量来估计fAPAR。我们的结果表明该模型解释了77%的fAPAR变异。对叶色素浓度,冠层结构和/或叶片含水量敏感的所有谱带都可能有助于估计,特别是靠近(720 nm)或在(750 nm和780 nm)内的近红外光谱区的谱带。这项研究表明,这种基于窄带帧的无人机系统将对植被监测有用。通过适当的飞行前计划和硬件改进,窄带多光谱无人机系统的映射可以与有人驾驶飞机系统的映射相媲美。

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