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Mapping Maize Water Stress Based on UAV Multispectral Remote Sensing

机译:基于UAV MultiSpectral遥感的映射玉米水力胁迫

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摘要

Mapping maize water stress status and monitoring its spatial variability at a farm scale are a prerequisite for precision irrigation. High-resolution multispectral images acquired from an unmanned aerial vehicle (UAV) were used to evaluate the applicability of the data in mapping water stress status of maize under different levels of deficit irrigation at the late vegetative, reproductive and maturation growth stages. Canopy temperature, field air temperature and relative humidity obtained by a handheld infrared thermometer and a portable air temperature/relative humidity meter were used to establish a crop water stress index (CWSI) empirical model under the weather conditions in Ordos, Inner Mongolia, China. Nine vegetation indices (VIs) related to crop water stress were derived from the UAV multispectral imagery and used to establish CWSI inversion models. The results showed that non-water-stressed baseline had significant difference in the reproductive and maturation stages with an increase of 2.1 °C, however, the non-transpiring baseline did not change significantly with an increase of 0.1 °C. The ratio of transformed chlorophyll absorption in reflectance index (TCARI) and renormalized difference vegetation index (RDVI), and the TCARI and soil-adjusted vegetation index (SAVI) had the best correlations with CWSI. R2 values were 0.47 and 0.50 for TCARI/RDVI and TCARI/SAVI at the reproductive and maturation stages, respectively; and 0.81 and 0.80 for TCARI/RDVI and TCARI/SAVI at the late reproductive and maturation stages, respectively. Compared to CWSI calculated by on-site measurements, CWSI values retrieved by VI-CWSI regression models established in this study had more abilities to assess the field variability of crop and soil. This study demonstrates the potentiality of using high-resolution UAV multispectral imagery to map maize water stress.
机译:测绘玉米水胁迫状态并在农场规模监测其空间变异性是精密灌溉的先决条件。从无人驾驶飞行器(UAV)获取的高分辨率多光谱图像,用于评估数据在晚期植物,生殖和成熟生长阶段的不同缺陷灌溉水平下玉米水力应力状态的应用。通过手持式红外温度计和便携式空气温度/相对湿度计获得的冠层温度,现场空气温度和相对湿度,用于在中国内蒙古鄂尔多斯天气条件下建立作物水分应力指数(CWSI)实证模型。与农作物水胁迫相关的九个植被指数(VI)来自无人机多光谱图像,并用于建立CWSI反转模型。结果表明,非水应激基线在繁殖和成熟阶段具有显着差异,同时增加了2.1°C,然而,非传递基线没有显着变化,增加0.1℃。反射率指数(Tcari)和重型化差异植被指数(RDVI)中转化的叶绿素吸收的比例,以及TCARI和土壤调整后植被指数(SAVI)与CWSI具有最佳相关性。对于生殖和成熟阶段,TCari / RDVI和TCARI / SAVI分别为0.47和0.50分别为0.47和0.50; TCari / RDVI和TCARI / SAVI分别在晚期生殖和成熟阶段的0.81和0.80。与现场测量计算的CWSI相比,在本研究中建立的VI-CWSI回归模型检索的CWSI值具有更多的能力来评估作物和土壤的田间变异性。本研究展示了使用高分辨率UAV MultiSpectral图像来映射玉米水胁迫的潜力。

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