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Paddy Growing Stages Model Based on Vegetation Indices Using Ultra-High Spatial Resolution Images

机译:基于使用超高空间分辨率图像的植被指数的稻谷生长阶段模型

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Paddy is one of the most important food sources in Indonesia. It is evidenced by the increasing number of national rice consumption averagely at 6.29% per year, particularly in 2011-2015. However, the production seems does not equally match the rise in consumption. Estimates in rice production are relatively unreliable. It is due to the uneven planting time in several areas and a conventional method applied to estimate the production. This study proposes alternative methods to estimate rice production. This study aims to analyze the paddy growing stages and determine the most optimal model to estimate the paddy growing stages based on the vegetation indices. This study used the excellence of remote sensing technology especially for paddy field monitoring, emphasizing on paddy growing stages assessment. An airborne remote sensing platform, specifically the Unmanned Aerial Vehicle (UAV) is used to map the rice field in Bekasi Regency, West Java Province. Through mapping at low altitude, the UAV can produce images with ultra-high resolution, so it is very well used for mapping the paddy growing stages with diverse characteristics. Several vegetation indices, derived from Red, Green, and Blue (RGB) bands, namely Normalized Green Red Difference Index (NGRDI), Excess Green Vegetation Index (ExG), and Visible Atmospherically Resistant Index (VARI). Furthermore, the regression model is used to obtain the most optimal model of the three vegetation indices used for estimating the paddy growing stages. The result showed that the UAV with RGB bands could be used as a sensor to determine the relationship between vegetation indices to the paddy growing stages and the most optimal model for estimating the paddy growing stages based on the vegetation indices is ExG (R~2 = 0.88).
机译:帕迪是印度尼西亚最重要的食物来源之一。越来越多的国家米饭消费量平均每年6.29%,特别是在2011 - 2015年。然而,生产似乎并不同样匹配消费的增加。水稻生产估计相对不可靠。它是由于若干区域中的种植时间不均匀,并且常规方法应用于估计生产。本研究提出了估算水稻生产的替代方法。本研究旨在分析稻谷生长阶段,并确定基于植被指数的稻田生长阶段的最佳模型。本研究采用了遥感技术的卓越,特别是对于稻田监测,强调稻谷生长阶段评估。一款机载遥感平台,特别是无人驾驶飞行器(UAV)用于映射西爪哇省贝卡西州丽晶的稻田。通过在低空中映射,UAV可以产生具有超高分辨率的图像,因此非常适合使用不同的特性映射稻谷生长阶段。几种植被指数,来自红色,绿色和蓝色(RGB)频段,即归一化绿色红差分指数(NGRDI),多余的绿色植被指数(exg),以及可见的大气抗性指数(Vari)。此外,回归模型用于获得用于估计稻田生长阶段的三个植被指数的最佳模型。结果表明,与RGB频段的UAV可以用作传感器,以确定基于植被指数估计稻田生长阶段的植被指数与最佳模型的关系是exg(r〜2 = 0.88)。

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