Exploring the Potential of High-Resolution Planetscope Imagery for Pasture Biomass Estimation in an Integrated Crop–Livestock System

A. A. Dos Reis, B. C. Silva, J. P. Werner, Y. F. Silva, J. Rocha, G. Figueiredo, J. Antunes, J. Esquerdo, A. Coutinho, R. Lamparelli, P. G. Magalhães
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引用次数: 1

Abstract

Pasture biomass information is essential to monitor forage resources in grazed areas, as well as to support grazing management decisions. The increasing temporal and spatial resolutions offered by the new generation of orbital platforms, such as Planet CubeSat satellites, have improved the capability of monitoring pasture biomass using remotely-sensed data. In a preliminary study, we investigated the potential of spectral variables derived from PlanetScope imagery to predict pasture biomass in an area of Integrated Crop-Livestock System (ICLS) in Brazil. Satellite and field data were collected during the same period (May – August 2019) for calibration and validation of the relation between predictor variables and pasture biomass using the Random Forest (RF) regression algorithm. We used as predictor variables 24 vegetation indices derived from PlanetScope imagery, as well as the four PlanetScope bands, and field management information. Pasture biomass ranged from approximately 24 to 656 g$.\mathrm{m}^{-2}$, with a coefficient of variation of 54.96%. Near Infrared Green Simple Ratio (NIR/Green), Green Leaf Algorithm (GLA) vegetation indices and days after sowing (DAS) are among the most important variables as measured by the RF Variable Importance metric in the best RF model predicting pasture biomass, which resulted in Root Mean Square Error (RMSE) of 52.04 g$.\mathrm{m}^{-2}(32.75$%). Accurate estimates of pasture biomass using spectral variables derived from PlanetScope imagery are promising, providing new insights into the opportunities and limitations related to the use of PlanetScope imagery for pasture monitoring.
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探索高分辨率行星望远镜图像在作物-牲畜综合系统中估算牧草生物量的潜力
牧草生物量信息对于监测放牧地区的牧草资源以及支持放牧管理决策至关重要。新一代轨道平台(如Planet CubeSat卫星)提供的时间和空间分辨率不断提高,提高了利用遥感数据监测牧草生物量的能力。在一项初步研究中,我们调查了从PlanetScope图像中获得的光谱变量在巴西作物-牲畜综合系统(ICLS)地区预测牧草生物量的潜力。在同一时期(2019年5月至8月)收集卫星和野外数据,使用随机森林(RF)回归算法校准和验证预测变量与牧草生物量之间的关系。我们使用来自PlanetScope影像的24个植被指数、4个PlanetScope波段和野外管理信息作为预测变量。牧草生物量约为24至656克。\ mathm {m}^{-2}$,变异系数为54.96%。近红外绿色简单比(NIR/Green)、绿叶算法(GLA)植被指数和播种后天数是预测牧草生物量的最重要变量,其均方根误差(RMSE)为52.04 g$.\ mathm {m}^{-2}(32.75$%)。利用来自PlanetScope图像的光谱变量准确估计牧草生物量是有希望的,这为使用PlanetScope图像进行牧草监测提供了新的机会和限制。
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