论文标题

使用经过合成数据培训的网络在未经调查区域的季节作物进度

In-Season Crop Progress in Unsurveyed Regions using Networks Trained on Synthetic Data

论文作者

Worrall, George, Judge, Jasmeet

论文摘要

许多商品作物具有生长阶段,在此期间,它们特别容易受到压力引起的产量损失。季节作物进度信息对于量化农作物风险很有用,卫星遥感(RS)可用于跟踪区域尺度的进度。目前,所有基于RS的作物进度估计(CPE)方法针对特定于作物的阶段依赖地面真实数据进行训练/校准。对地面调查数据的依赖将CPE方法限制在受调查的地区,从而限制了其效用。在这项研究中,开发了一种新方法,用于通过将调查区域的数据与针对未经验证区域产生的合成农作物进度数据相结合,从而在未经调查的地区进行基于RS的CPE。阿根廷的玉米种植区被用作替代替代区域。现有的天气产生,作物生长和光辐射转移模型与产生合成天气,作物进度和冠层反射率数据有关。基于双向长期记忆的神经网络(NN)方法对经过调查的数据,合成数据以及调查和合成数据的两种不同组合进行了训练。开发了一个停止标准,该标准使用了调查和合成数据验证损失的加权差异。当接受调查区域和合成数据的组合培训时,所有农作物进度阶段的净F1得分都提高了8.7%,并且总体绩效仅比在美国中西部接受调查的数据并应用的NN培训时仅低21%。在带有双重种植窗口的区域中,合成数据的性能提高最大,而来自美国中西部的调查区域数据的包含有助于减轻NN对NDVI数据中噪声的敏感性。总体结果表明,随着合成农作物进度数据的数量和种类的增加,可能有可能在其他未经调查区域进行季节CPE。

Many commodity crops have growth stages during which they are particularly vulnerable to stress-induced yield loss. In-season crop progress information is useful for quantifying crop risk, and satellite remote sensing (RS) can be used to track progress at regional scales. At present, all existing RS-based crop progress estimation (CPE) methods which target crop-specific stages rely on ground truth data for training/calibration. This reliance on ground survey data confines CPE methods to surveyed regions, limiting their utility. In this study, a new method is developed for conducting RS-based in-season CPE in unsurveyed regions by combining data from surveyed regions with synthetic crop progress data generated for an unsurveyed region. Corn-growing zones in Argentina were used as surrogate 'unsurveyed' regions. Existing weather generation, crop growth, and optical radiative transfer models were linked to produce synthetic weather, crop progress, and canopy reflectance data. A neural network (NN) method based upon bi-directional Long Short-Term Memory was trained separately on surveyed data, synthetic data, and two different combinations of surveyed and synthetic data. A stopping criterion was developed which uses the weighted divergence of surveyed and synthetic data validation loss. Net F1 scores across all crop progress stages increased by 8.7% when trained on a combination of surveyed region and synthetic data, and overall performance was only 21% lower than when the NN was trained on surveyed data and applied in the US Midwest. Performance gain from synthetic data was greatest in zones with dual planting windows, while the inclusion of surveyed region data from the US Midwest helped mitigate NN sensitivity to noise in NDVI data. Overall results suggest in-season CPE in other unsurveyed regions may be possible with increased quantity and variety of synthetic crop progress data.

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