SELECTING THE MOST OPTIMUM SENTINEL-2A BASED VEGETATION INDEX TO ESTIMATE LEAF AREA INDEX OF THREE RICE CULTIVARS

Oxa Aspera Endiviana, Impron, Y. Setiawan, Harry Imantho, S. Sugiarto, T. Yuliawan
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Abstract

The estimation of Leaf area index (LAI) becomes important as LAI is one of parameters in the analysis of crop growth model. The crop growth has different characteristics and its strongly influenced by environmental conditions and factors. The growth tends to occur in a short period of time and covers a large area. Therefore, an approach to analyze the pattern of changes in crop growth based on LAI spatially is needed. Remote sensing offers an effective and efficient approach in monitoring crop growth characteristic, which can be done in a time series with a wide area coverage by detecting and monitoring the physical characteristics of crop. The most famous and commonly used parameters to estimate LAI are vegetation indices which are usually calculated based on the ratio of the red and NIR wavelength, known as spectral signature. The objectives of the research are to examine the spatio-temporal correlation between LAI of three rice cultivars Sentinel-2A based vegetation indices, and to select the most optimum vegetation index in estimating LAI. A synchronization process of the LAI for each plot with the pixel of Sentinel-2A based vegetation index value was carried out. The results of the analysis show that the vegetation index has a strong correlation with LAI. The Comparison of the four calculated vegetation indices in estimating LAI was performed using linear regression model and followed by comparing R-squared, RMSE and Correctness. The EVI2 vegetation index provides the most optimum representation in capturing crop growth patterns based on LAI.
选取最优的sentinel-2a植被指数估算3个水稻品种的叶面积指数
叶面积指数(LAI)作为作物生长模型分析的参数之一,其估算具有重要意义。作物生长具有不同的特点,受环境条件和因子的影响较大。生长往往发生在短时间内,覆盖面积大。因此,需要一种基于LAI的作物生长变化空间格局分析方法。遥感为监测作物生长特性提供了一种有效和高效的方法,通过探测和监测作物的物理特性,可以在覆盖范围广的时间序列中进行监测。估计LAI最著名和最常用的参数是植被指数,植被指数通常是根据红光和近红外波长的比值计算的,称为光谱特征。基于Sentinel-2A植被指数,研究3个水稻品种LAI的时空相关性,选择最优的植被指数估算LAI。将每个样地的LAI与基于Sentinel-2A的植被指数值像元进行同步。分析结果表明,植被指数与LAI具有较强的相关性。采用线性回归模型对计算得到的4种植被指数估算LAI进行比较,然后比较r平方、RMSE和正确性。EVI2植被指数是基于LAI获取作物生长模式的最优表征。
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