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Monitoring of Sugarcane Crop based on Time Series of Sentinel-1 Data

机译:基于时间序列的Sentinel-1数据进行监测甘蔗作物

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Monitoring the spatial pattern and growth of sugarcane timely and accurately is of great importance at regional and global scales. In this paper, the focus was on sugarcane identification in Southern China with FuSui country as the study area. Classification was based on sentinel-1 different polarizations and sugarcane phenology. In order to explore the optimum periods and polar metric characters, time series of C-band dual polarization sentinel-1 data in 2017 totally 130 images were collected over the whole sugarcane growth season. Then the growth curve was built based on the former exploration. After that, there was a following analysis by combining growth curve and polarimetric characters of sugarcane, which contributes to setting attribute to identity. At last, the advanced rules were built to identify sugarcane according to growth curve above and subordinating degree function. Sugarcane extraction accuracy was verified by numerous ground data. The conclusions are as follows: (1)The results of this study show the importance of using C-band muti-temporal dual polarization data on crop identification especially for sugarcane comparing with traditional optical data. In other words, it's crucial for crop identification to extract the backscattering coefficient. When combining with a part of samples, the curve of crop growth used for classification can be portrayed. To deepen the difference between sugarcane and other typical features, additional three kinds of reference object like eucalyptus, water and buildings, all of which distributes in the experimental area, with an extensive representation. (2)The analysis of polarimetric characters has shown that the inherent SAR backscatter feature VH is superior in classification accuracy to the VV, which achieved an accuracy of 88.07%. During the stage of seedling and tillering, the amplitude from sugarcane is higher than that in other objects, proving the advantage of VV in sugarcane identification. On the contrary, the giant grass and aiphyllium appearing stable in sequential variation, corresponding banana and eucalyptus respectively. (3)Moreover, the sugarcane has shown strong difference in March when it comes to the optimum periods, the data is more sensitive to the change of sugarcane. There was an evidently reduction as time goes by, so choosing the data from March makes higher accuracy. Therefore, the data from March with the polarimetric character VH was used as the optimum periods.
机译:监测及时,准确地监测甘蔗的空间模式和生长在区域和全球范围内非常重要。在本文中,重点是中国南方的甘蔗鉴定与Fusui国家作为研究区。分类基于Sentinel-1不同的偏振和甘蔗候选。为了探索最佳期间和极性度量字符,2017年的C波段双极化哨声-1数据的时间序列完全130次图像被整个甘蔗生长季收集。然后基于前勘探建立了成长曲线。之后,通过组合甘蔗的生长曲线和偏振特征来进行以下分析,这有助于将属性设置为身份。最后,建立了先进的规则以根据上述生长曲线和下属程度函数识别甘蔗。甘蔗提取精度被许多地面数据验证。结论如下:(1)该研究的结果表明,在与传统光学数据相比,尤其是使用C波段Muti-Temporal双极化数据的重要性。换句话说,对裁剪识别提取反向散射系数至关重要。当与一部分样本结合时,可以描绘用于分类的作物生长曲线。为了深化甘蔗和其他典型特征之间的差异,额外的三种参考物体,如桉树,水和建筑物,所有这些都在实验区域分布,具有广泛的代表性。 (2)Polarimetric字符的分析表明,固有的SAR反向散射特征VH在VV的分类精度方面优异,这达到了88.07%的准确性。在幼苗和分蘖期的阶段,甘蔗的振幅高于其他物体,证明了甘蔗鉴定中VV的优点。相反,巨型草和紫红石分别出现在顺序变异,相应的香蕉和桉树中稳定。 (3)此外,甘蔗在3月份达到了最佳期间,数据对甘蔗的变化更敏感。随着时间的推移,随着时间的推移,显然减少了,因此从3月份选择数据的准确性更高。因此,使用Polarimetric字符VH的3月份的数据被用作最佳时段。

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