Tagliabue Giulia, Boschetti Mirco, Bramati Gabriele, Candiani Gabriele, Colombo Roberto, Nutini Francesco, Pompilio Loredana, Rivera-Caicedo Juan Pablo, Rossi Marta, Rossini Micol, Verrelst Jochem, Panigada Cinzia
Remote Sensing of Environmental Dynamics Laboratory, University of Milano - Bicocca, Milan, Italy.
Institute for Electromagnetic Sensing of the Environment, National Research Council, Milan, Italy.
ISPRS J Photogramm Remote Sens. 2022 May;187:362-377. doi: 10.1016/j.isprsjprs.2022.03.014. Epub 2022 Apr 1.
The recently launched and upcoming hyperspectral satellite missions, featuring contiguous visible-to-shortwave infrared spectral information, are opening unprecedented opportunities for the retrieval of a broad set of vegetation traits with enhanced accuracy through novel retrieval schemes. In this framework, we exploited hyperspectral data cubes collected by the new-generation PRecursore IperSpettrale della Missione Applicativa (PRISMA) satellite of the Italian Space Agency to develop and test a hybrid retrieval workflow for crop trait mapping. Crop traits were mapped over an agricultural area in north-east Italy (Jolanda di Savoia, FE) using PRISMA images collected during the 2020 and 2021 vegetative seasons. Leaf chlorophyll content, leaf nitrogen content, leaf water content and the corresponding canopy level traits scaled through leaf area index were estimated using a hybrid retrieval scheme based on PROSAIL-PRO radiative transfer simulations coupled with a Gaussian processes regression algorithm. Active learning algorithms were used to optimise the initial set of simulated data by extracting only the most informative samples. The accuracy of the proposed retrieval scheme was evaluated against a broad ground dataset collected in 2020 in correspondence of three PRISMA overpasses. The results obtained were positive for all the investigated variables. At the leaf level, the highest accuracy was obtained for leaf nitrogen content (LNC: r=0.87, nRMSE=7.5%), while slightly worse results were achieved for leaf chlorophyll content (LCC: r=0.67, nRMSE=11.7%) and leaf water content (LWC: r=0.63, nRMSE=17.1%). At the canopy level, a significantly higher accuracy was observed for nitrogen content (CNC: r=0.92, nRMSE=5.5%) and chlorophyll content (CCC: r=0.82, nRMSE=10.2%), whereas comparable results were obtained for water content (CWC: r=0.61, nRMSE=16%). The developed models were additionally tested against an independent dataset collected in 2021 to evaluate their robustness and exportability. The results obtained (i. LCC: r=0.62, nRMSE=27.9%; LNC: r=0.35, nRMSE=28.4%; LWC: r=0.74, nRMSE=20.4%; LAI: r=0.84, nRMSE=14.5%; CCC: r=0.79, nRMSE=18.5%; CNC: r=0.62, nRMSE=23.7%; CWC: r=0.92, nRMSE=16.6%) evidence the transferability of the hybrid approach optimised through active learning for most of the investigated traits. The developed models were then used to map the spatial and temporal variability of the crop traits from the PRISMA images. The high accuracy and consistency of the results demonstrates the potential of spaceborne imaging spectroscopy for crop monitoring, paving the path towards routine retrievals of multiple crop traits over large areas that could drive more effective and sustainable agricultural practices worldwide.
最近发射以及即将发射的高光谱卫星任务,具备连续的可见光到短波红外光谱信息,正通过新颖的反演方案为以更高精度反演一系列广泛的植被特征带来前所未有的机遇。在此框架下,我们利用意大利航天局新一代的“应用任务高光谱前哨卫星”(PRISMA)收集的高光谱数据立方体,来开发和测试一种用于作物特征制图的混合反演工作流程。利用2020年和2021年植被季收集的PRISMA图像,对意大利东北部(费拉拉省乔兰达迪萨沃亚)的一个农业区域的作物特征进行了制图。基于PROSAIL - PRO辐射传输模拟并结合高斯过程回归算法的混合反演方案,估算了叶片叶绿素含量、叶片氮含量、叶片含水量以及通过叶面积指数缩放的相应冠层水平特征。主动学习算法用于通过仅提取最具信息性的样本,来优化初始模拟数据集。针对2020年在三次PRISMA卫星过境对应区域收集的广泛地面数据集,评估了所提出反演方案的精度。对于所有调查变量,获得的结果都是积极的。在叶片水平上,叶片氮含量(LNC:r = 0.87,nRMSE = 7.5%)的精度最高,而叶片叶绿素含量(LCC:r = 0.67,nRMSE = 11.7%)和叶片含水量(LWC:r = 0.63,nRMSE = 17.1%)的结果稍差。在冠层水平上,氮含量(CNC:r = 0.92,nRMSE = 5.5%)和叶绿素含量(CCC:r = 0.82,nRMSE = 10.2%)的精度显著更高,而含水量(CWC:r = 0.61,nRMSE = 16%)的结果相当。所开发的模型还针对2021年收集的独立数据集进行了测试,以评估其稳健性和可移植性。获得的结果(即LCC:r = 0.62,nRMSE = 27.9%;LNC:r = 0.35,nRMSE = 28.4%;LWC:r = 0.74,nRMSE = 20.4%;LAI:r = 0.84,nRMSE = 14.5%;CCC:r = 0.79,nRMSE = 18.5%;CNC:r = 0.62,nRMSE = 23.7%;CWC:r = 0.92,nRMSE = 16.6%)证明了通过主动学习优化的混合方法对大多数调查特征的可移植性。然后,所开发的模型用于从PRISMA图像绘制作物特征的空间和时间变异性。结果的高精度和一致性证明了星载成像光谱技术在作物监测方面的潜力,为在大面积上常规反演多种作物特征铺平了道路,这可能推动全球更有效和可持续的农业实践。