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首页> 外文期刊>Agricultural Water Management >Development of Variable Threshold Models for detection of irrigated paddy rice fields and irrigation timing in heterogeneous land cover.
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Development of Variable Threshold Models for detection of irrigated paddy rice fields and irrigation timing in heterogeneous land cover.

机译:可变阈值模型的开发,用于检测稻田灌溉和异质土地覆盖中的灌溉时间。

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Accurate monitoring of irrigated paddy field area and irrigation timing are of a great concern in agricultural water management due to the substantial consumption of fresh water when irrigating paddy fields. Spectral threshold methods (Xiao et al., 2005) have been widely applied to detect irrigated paddy fields and irrigation timing using Moderate Resolution Imaging Spectroradiometer (MODIS) Enhanced Vegetation Index (EVI) and Land Surface Water Index (LSWI). These methods applied constant additive threshold values (T) to LSWI and compared it to EVI to detect the irrigated paddy fields. In this study, we developed Variable Threshold Models that utilized different pixel-based threshold values depending on sub-pixel land cover heterogeneity and hence, improve detection performance on distributed small-scale paddy fields. Non-irrigated sub-pixels were quantified with irrigation maps produced by Synthetic Aperture Radar (SAR) microwave images. Significant positive correlation between EVI and the sub-pixel numbers of non-irrigated area were found (r=0.87), which resulted in higher T for MODIS pixels with more non-irrigated sub-pixels. Accordingly, a Variable Threshold Model, i.e. a regression model between T and EVI, was developed. With the Variable Threshold Model, agreement rates between MODIS and SAR-based irrigated small-scale paddy field classification doubled compared with that from a fixed threshold value. In comparison with field observations, the Variable Threshold Models showed a mean error of +0.9 days, an improvement over the mean error of +2.8 days from a fixed threshold model. Combined utilization of SAR and MODIS images provides a useful tool for developing a Variable Threshold Model that can enhance accurate monitoring of irrigation dates across heterogeneous paddy field regions.
机译:由于灌溉稻田时大量消耗淡水,因此准确监测稻田的灌溉面积和灌溉时间是农业用水管理中非常关注的问题。光谱阈值方法(Xiao等,2005)已被广泛应用到使用中分辨率成像光谱仪(MODIS)增强植被指数(EVI)和地表水指数(LSWI)来检测灌溉稻田和灌溉时间的情况。这些方法将恒定的附加阈值(T)应用于LSWI,并将其与EVI进行比较以检测灌溉的稻田。在这项研究中,我们开发了可变阈值模型,该变量阈值模型根据子像素土地覆被的异质性利用了不同的基于像素的阈值,因此提高了对分布式小规模稻田的检测性能。使用合成孔径雷达(SAR)微波图像生成的灌溉图对未灌溉的子像素进行量化。发现EVI与非灌溉区域的子像素数量之间存在显着的正相关关系(r = 0.87),这导致MODIS像素具有更高的非灌溉子像素时具有更高的T。因此,开发了可变阈值模型,即,T和EVI之间的回归模型。使用可变阈值模型,MODIS和基于SAR的灌溉小规模稻田分类之间的一致率比固定阈值大一倍。与现场观察相比,可变阈值模型的平均误差为+0.9天,比固定阈值模型的+2.8天的平均误差有所改善。 SAR和MODIS图像的组合利用为开发可变阈值模型提供了有用的工具,该模型可以增强跨不同稻田区域的灌溉日期的准确监控。

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