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Detecting abandoned farmland using harmonic analysis and machine learning

机译:使用谐波分析和机器学习检测废弃的农田

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It is critical to inventory abandoned farmland soon after it is generated, to better manage agricultural resources and to prevent negative consequences that would otherwise follow. This study aims to distinguish abandoned farmlands from active croplands-rice paddy and agricultural fields-by discerning the phenological trajectories over a short-term period of three years (Jan. 2016 to Dec. 2018) in Gwanyang City in South Korea. For Support Vector Machine (SVM) classification, we fully utilized parameters derived from harmonic analyses of the three vegetation indices (VIs: NDVI, NDWI, and SAVI) extracted from Sentinel-2A imagery. The harmonic analyses proved that higher-order sinusoid components produced better fitting to explain the trajectory of the VIs-the maximum adjusted R-2 was 95.23%-and the multiple VIs diversified the attributes for the classifications. Consequently, the higher-order harmonic components and the additional VIs increased the accuracy when used in SVM classification. The best performing classification was achieved with a composite of harmonic terms derived from the three VIs, yielding overall accuracy of 90.72%, Kappa index of 0.858, and user's accuracy for abandoned farmland of 93.40%. The proposed method here would greatly improve the process of detecting abandoned farmland, despite a relatively short observation period, and enable a rapid response to the occurrence of abandonment.
机译:在生成后,它很快就会存放地放弃的农田至关重要,以更好地管理农业资源,并防止否则遵循的负面后果。本研究旨在区分来自活跃的农田 - 稻田和农业领域的被遗弃的农田 - 通过挑剔韩国吉万阳市的短期三年(2016年12月至2018年12月)。对于支持向量机(SVM)分类,我们充分利用了从Sentinel-2a图像中提取的三个植被指数(VIS:NDVI,NDWI和Savi)的谐波分析的参数。谐波分析证明,高阶正弦骨元件产生更好的拟合来解释VI的轨迹 - 最大调整的R-2为95.23% - 以及多个VIS为分类的属性多样化。因此,在SVM分类中使用时,高阶谐波分量和额外的VI增加了准确性。最佳表现分类是通过源自三见的谐波术语的综合来实现的,总体准确性为90.72%,Kappa指数为0.858,以及用户对废弃农田的准确性为93.40%。尽管观察期相对较短,但这里提出的方法将大大改善检测被遗弃的农田的过程,并能够快速反应放弃的发生。

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