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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >A new method for crop classification combining time series of radar images and crop phenology information
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A new method for crop classification combining time series of radar images and crop phenology information

机译:作物分类的新方法组合雷达图像和作物候选信息的时间序列

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Agricultural land cover is characterized by strong variations within relatively short time intervals. These dynamics are challenging for land cover classifications on the one hand, but deliver crucial information that can be used to improve the classifiers performance on the other hand. Since up to date mapping of crops is crucial to assess the impact of agricultural land use on the ecosystems, an accurate and complete classification of crop types is of high importance. In the presented study, a new multitemporal data based classification approach was developed that incorporates knowledge about the phenological changes on crop lands. It identifies phenological sequence patterns (PSP) of the crop types based on a dense stack of Sentinel-1 data and accurate information about the plant's phenology. The performance of the developed methodology has been tested for two different vegetation seasons using over 200 ground truth fields located in northern Germany. The results showed that a dense time series of Sentinel-1 images allowed for high classification accuracies of grasslands, maize, canola, sugar beets and potatoes (F1-score above 0.8) using PSP as well as standard (Random Forest and Maximum Likelihood) classification method. The PSP approach clearly outperformed standard methods for cereal crops, especially for spring barley where the F1-score varied between zero and 0.43 for standard approaches, while PSP achieved values as high as 0.74 and 0.79 for both vegetation seasons. The PSP based approach also outperformed for oat, winter barley and rye. Furthermore, the PSP classification is more resilient to differences in farming management and conditions of growth since it takes information about each crop types' growing stage and its growing period into consideration. The results also indicate, that the PSP approach was more sensitive to subtle changes such as the proportion of weeds within a field. (C) 2017 Elsevier Inc. All rights reserved.
机译:农业用地覆盖的特点是在相对较短的时间间隔内的强烈变化。这些动态一方面对土地覆盖分类进行挑战,但提供了可用于改善分类器性能的重要信息。由于作物的迄今为止,评估农业土地利用对生态系统的影响至关重要,因此对作物类型的准确性和完整分类具有很高的重要性。在本研究中,开发了一种新的多立体数据基于数据的分类方法,该方法纳入了关于作物土地上的酚类变化的知识。它识别基于封闭式堆栈的作物类型的斑纹序列模式(PSP),以及有关植物候选的准确信息。已经使用了德国北部的200多个地面真实地进行了两种不同的植被季节测试了发达方法的表现。结果表明,使用PSP以及标准(随机森林和最大可能性)分类方法。 PSP方法明显优于谷物作物的标准方法,特别是对于春季大麦,其中F1分数在零点和0.43之间变化,对于标准方法,PSP为植被季节实现高达0.74和0.79的值。基于PSP的方法也表现为OAT,冬季大麦和黑麦。此外,PSP分类对农业管理和增长条件的差异更具弹性,因为它需要关于每个作物类型的日益增长的阶段和其日益增长的时期的信息。结果还表明,PSP方法对细微变化更敏感,例如场内杂草的比例。 (c)2017年Elsevier Inc.保留所有权利。

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