Ling Bohua, Goodin Douglas G, Raynor Edward J, Joern Anthony
School of Civil and Transportation Engineering, Guangdong University of Technology, Guangzhou, China.
Department of Geography, Kansas State University, Manhattan, KS, United States.
Front Plant Sci. 2019 Feb 25;10:142. doi: 10.3389/fpls.2019.00142. eCollection 2019.
Understanding the spatial distribution of forage quality is important to address critical research questions in grassland science. Due to its efficiency and accuracy, there has been a widespread interest in mapping the canopy vegetation characteristics using remote sensing methods. In this study, foliar chlorophylls, carotenoids, and nutritional elements across multiple tallgrass prairie functional groups were quantified at the leaf level using hyperspectral analysis in the region of 470-800 nm, which was expected to be a precursor to further remote sensing of canopy vegetation quality. A method of spectral standardization was developed using a form of the normalized difference, which proved feasible to reduce the interference from background effects in the leaf reflectance measurements. Chlorophylls and carotenoids were retrieved through inverting the physical model PROSPECT 5. The foliar nutritional elements were modeled empirically. Partial least squares regression was used to build the linkages between the high-dimensional spectral predictor variables and the foliar biochemical contents. Results showed that the retrieval of leaf biochemistry through hyperspectral analysis can be accurate and robust across different tallgrass prairie functional groups. In addition, correlations were found between the leaf pigments and nutritional elements. Results provided insight into the use of pigment-related vegetation indices as the proxy of plant nutrition quality.
了解牧草质量的空间分布对于解决草地科学中的关键研究问题至关重要。由于其效率和准确性,利用遥感方法绘制冠层植被特征图已引起广泛关注。在本研究中,使用470 - 800 nm波段的高光谱分析在叶片水平上对多个高草草原功能组中的叶片叶绿素、类胡萝卜素和营养元素进行了量化,这有望成为进一步遥感冠层植被质量的前奏。利用归一化差异形式开发了一种光谱标准化方法,该方法被证明可有效减少叶片反射率测量中背景效应的干扰。通过反演物理模型PROSPECT 5来反演叶绿素和类胡萝卜素。叶片营养元素通过经验建模。使用偏最小二乘回归建立高维光谱预测变量与叶片生化含量之间的联系。结果表明,通过高光谱分析反演叶片生化成分在不同的高草草原功能组中可以准确且稳健。此外,还发现了叶片色素与营养元素之间的相关性。研究结果为利用与色素相关的植被指数作为植物营养质量的替代指标提供了依据。