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首页> 外文期刊>Photogrammetric Engineering & Remote Sensing: Journal of the American Society of Photogrammetry >Phenology-based Crop ClassificationAlgorithm and its Implications on Agricultural Water Use Assessments in California's Central Valley
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Phenology-based Crop ClassificationAlgorithm and its Implications on Agricultural Water Use Assessments in California's Central Valley

机译:基于物候的作物分类算法及其对加利福尼亚中央谷地农业用水评估的启示

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The overarching goal of this study was to map specific crop types in the Central Valley, California and estimate the effect of classification uncertainty on the calculation of crop evapotranspiration (etc). A phenology-based classification (pbc) approach was developed to identify crop types based on phenological and spectral metrics derived from the time series of Landsat tm/etm+ imagery. Phenological metrics, calculated by fitting asymmetric double sigmoid functions to temporal profiles of enhancedvegetation index (EVl), were capable of separating crop types with distinct crop calendars. An innovative method was used to compute spectral metrics to represent crops' spectral characteristics at certain phenological stages instead of any specific imaging date. Crop mapping using these metrics showed a stable performance without influences of low-quality data and inter-annual differences in imaging dates. The requirement for ground reference data by the pbc approach was low because classification algorithms were mostly built according to the knowledge on crop calendars and agricultural practices. Techniques including image segmentation, data fusion with MODis imagery, and decision tree were incorporated to make the approach effective and efficient. Though moderate accuracy (-65.0 percent) was achieved, etc calculated by the Food and Agriculture Organization (fao) 56 method showed that the estimate of water use was not likely to be significantly affected by the classification error in pbc. All theseadvantages imply the strength of the pbc approach in the regular crop mapping of the Central Valley.
机译:这项研究的总体目标是绘制加利福尼亚中央山谷的特定作物类型,并估计分类不确定性对作物蒸散量计算的影响(等)。基于物候分类(pbc)的方法已被开发出来,可根据从Landsat tm / etm +影像的时间序列得出的物候和光谱指标来识别作物类型。通过将非对称双S形函数拟合到增强型植被指数(EV1)的时间剖面而计算出的物候指标能够区分具有不同作物历法的作物类型。一种创新方法用于计算光谱指标,以代表某些物候阶段而不是任何特定成像日期的农作物光谱特征。使用这些指标的作物作图显示了稳定的性能,而不受低质量数据和成像日期的年际差异的影响。 pbc方法对地面参考数据的要求较低,这是因为分类算法主要是根据有关作物日历和农业实践的知识构建的。结合了图像分割,与MODis图像的数据融合以及决策树等技术,使该方法有效而高效。尽管达到了中等准确度(-65.0%),但是由粮食及农业组织(粮农组织)[56]计算得出的结果表明,用水量的估计不太可能受到pbc中分类错误的显着影响。所有这些优点暗示了在中央谷地常规作物测绘中PBC方法的优势。

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