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Simple method for extracting the seasonal signals of photochemical reflectance index and normalized difference vegetation index measured using a spectral reflectance sensor

机译:用光谱反射传感器提取光化学反射率指数的季节性信号和归一化差异植被指数的简单方法

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A spectral reflectance sensor(SRS)fixed on the near-surface ground was developed to support the continuous monitoring of vegetation indices such as the normalized difference vegetation index(NDVI)and photochemical reflectance index(PRI).NDVI is useful for indicating crop growth/phenology,whereas PRI was developed for observing physiological conditions.Thus,the seasonal change patterns of NDVI and PRI are two valuable pieces of information in a crop-monitoring system.However,capturing the seasonal patterns is considered challenging because the vegetation index values estimated by the reflection from vegetation are often governed by meteorological conditions,such as solar irradiance and precipitation.Further,unlike growth/phenology,the physiological condition has diurnal changes as well as seasonal characteristics.This study proposed a novel filtering method for extracting the seasonal signals of SRS-based NDVI and PRI in paddy rice,barley,and garlic.First,the measurement accuracy of SRSs was compared with handheld spectrometers,and the R^(2)values between the two devices were 0.96 and 0.81 for NDVI and PRI,respectively.Second,the experimental study of threshold criteria with respect to meteorological variables(i.e.,insolation,cloudiness,sunshine duration,and precipitation)was conducted,and sunshine duration was the most useful one for excluding distorted values of the vegetation indices.After data processing based on sunshine duration,the R^(2)values between the measured vegetation indices and the extracted seasonal signals of vegetation indices increased by approximately 0.002–0.004(NDVI)and 0.065–0.298(PRI)on the three crops,and the seasonal signals of vegetation indices became noticeably improved.This method will contribute to an agricultural monitoring system by identifying the seasonal changes in crop growth and physiological conditions.
机译:在近表面接地上固定的光谱反射率传感器(SRS)以支持诸如归一化差异植被指数(NDVI)和光化学反射率指数(PRI)的植被指数的连续监测.NDVI对于表明作物生长是有用的候选,而PRI是为了观察生理条件而开发的。本,NDVI和PRI的季节变化模式是作物监测系统中的两个有价值的信息。但是,捕获季节性模式被认为是具有挑战性的,因为植被指数值估计植被的反射往往受气象条件(如太阳辐照度和沉淀)的管辖。与生长/候选不同,生理条件具有昼夜变化以及季节性特征。本研究提出了一种提取季节性信号的新型过滤方法基于SRS的NDVI和PRI在水稻,大麦和大蒜中。首先,SRS的测量精度将S与手持光谱仪进行比较,并且对于NDVI和PRI分别为0.96和0.81的R ^(2)值分别为0.96和0.81。二进制率,对气象变量的阈值标准的实验研究(即,缺失,云,云,浑浊,进行阳光持续时间和降水),阳光持续时间是用于排除植被索引的扭曲值的最有用的。基于阳光持续时间的数据处理,测量植被指数与提取的季节性之间的R ^(2)值植被指数的信号在三种作物上增加约0.002-0.004(NDVI)和0.065-0.298(PRI),植被指数的季节性信号显着改善。本方法将通过确定季节性变化来促进农业监测系统在作物生长和生理条件下。

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