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Corn growth stage estimation using time series vegetation index

机译:利用时间级植被指数估计玉米生长阶段估计

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Crop growth stage is important information for decision making in many related agricultural sectors. In-time accurate estimation of crop growth stage is desired. Kernel-fitting of time series vegetation indices have shown potential in estimating crop growth stage while tolerant to noisy data and missing data. The challenge to apply such models is dealing with current year when incomplete data are available. This study proposed a progressive double sigmoid model that leverages the existing best model to compensate the incompleteness of data. The progressive double sigmoid modeling algorithm has three stages of estimation: pre-peak, early post-peak, and late post-peak. Simulation results and experiments showed that the progressive version of double sigmoid algorithm solved the problem of fitting model with insufficient data at early stages. Double sigmoid models have been compared with other alternative approaches in different treatment of data analysis. The results showed that double sigmoid models performed better than moving median window smoothing and Savitzky-Golay alone. Further studies may consider optimizing season partitions and thresholds.
机译:作物增长阶段是许多相关农业部门决策的重要信息。期望准确地估计作物生长阶段。时间序列植被指数的核心拟合在估计作物生长阶段的可能性,同时容忍嘈杂的数据和缺失数据。应用此类模型的挑战正在处理不完整数据的当前年份。本研究提出了一种逐步的双互补模型,利用现有的最佳模型来补偿数据的不完整性。渐进的双六样型建模算法有三个估计阶段:预峰,早期后峰值和晚期后峰。仿真结果与实验表明,双六端算法的逐步版本解决了早期数据不足的拟合模型问题。与不同处理数据分析的不同治疗方法进行了双秒形模型。结果表明,双齿轮模型表现优于移动中位窗口平滑和单独的Savitzky-Golay。进一步的研究可以考虑优化季节分区和阈值。

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