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The area extraction of winter wheat in mixed planting area based on Sentinel-2aremote sensing satellite images

机译:基于Sentinel-2Remote感应卫星图像的混合种植面积冬小麦区域提取

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ABSTRACT The traditional area extraction method mainly depends on manual field survey methods, it is workload, slow and high cost. While remote sensing technology has the advantages of accuracy, rapidity, macroscopic and dynamic, which has become an effective means to extract crop growing area. In this paper, we took Kaifeng City in Henan Province as the study area. Firstly, we explored the advantages of Sentinel-2A RENDVI in crop identification. Then used the supervised classification SVM, object-oriented classification method and assisted with field measured data to extract the winter wheat planting area, the characteristics of the two methods were compared and analysed. Finally, we combined the above two classification methods and proposed a new classification method V2OAE to remove unnecessary influencing factors. The experiment results showed that RENDVI has better recognition ability than the NDVI (Normalized Difference Vegetation Index) in distinguishing vegetation with similar spectrum, the classification effect of object-oriented classification is better than supervised classification SVM, and our classification method removes unnecessary influence factors in the results of object-oriented classification, which is further improve the monitoring accuracy.Firstly, we have preprocessed the Sentinel-2A image data, its steps are: (1) In the first step, we made radiation calibration for remote sensing images to eliminate the image distortion caused by external factors, data acquisition and transmission systems and so on; (2) In the second step, we made atmospheric correction to eliminate changes in the spectral feature of remote sensing images caused by atmospheric absorption or scattering; (3) In the third step, we made band resampling to unify the resolution of remote sensing images and facilitate the mathematical combination operation of vegetation index; (4) In the fourth step, we made mosaic and cutting to get preprocessed remote sensing images of Kaifeng City. Secondly, we analysed the spectral features of each object and established the interpretation mark with the field measured data. then we explored the ability to identify the ground objects based on NDVI(Normalized Difference Vegetation Index) and RENDVI. Third, we used the rule-based object-oriented classification method and SVM classification to extract the planting area of the study area, the input definition of SVM is spectral feature images of ground objects and the output definition of SVM is the recognition result of ground objects in the process of data training. Then the advantages and disadvantages of the two methods in classification results were analysed. Finally, In order to extract winter wheat information more accurately, we combined the above two classification methods and proposed a new classification method V2OAE (Vector Object Oriented Area Extraction) to remove unnecessary influencing factors, then the winter wheat planting area in Kaifeng City was statistically obtained.
机译:摘要传统区域提取方法主要取决于手动现场调查方法,它是工作量,缓慢和高成本。虽然遥感技术具有精度,快速,宏观和动态的优点,但这已成为提取作物生长面积的有效手段。在本文中,我们将河南省开峰市作为研究区。首先,我们探讨了Sentinel-2a Rendvi在作物识别中的优势。然后使用监督分类SVM,面向对象的分类方法,并辅助现场测量数据提取冬小麦种植面积,比较两种方法的特征和分析。最后,我们组合上述两种分类方法,并提出了一种新的分类方法V2OAE来消除不必要的影响因素。实验结果表明,Rendvi具有比NDVI(归一化差异植被指数)在区分植被与相似频谱中的识别能力,面向对象分类的分类效果优于监督分类SVM,我们的分类方法消除了不必要的影响因素面向对象分类的结果,进一步提高了监控精度。过度地,我们已经预处理了Sentinel-2a图像数据,其步骤是:(1)在第一步中,我们为遥感图像进行了辐射校准来消除遥感图像由外部因素,数据采集和传输系统等引起的图像失真等; (2)在第二步中,我们做出了大气校正,以消除由大气吸收或散射引起的遥感图像光谱特征的变化; (3)在第三步中,我们制造了乐队重采样,统一遥感图像的分辨率,并促进植被指数的数学组合操作; (4)在第四步,我们制作了马赛克和切割,以获得凯峰市的预处理遥感图像。其次,我们分析了每个对象的光谱特征,并与现场测量数据建立了解释标记。然后我们探讨了基于NDVI(归一化差异植被指数)和Rendvi的地面对象的能力。三,我们使用基于规则的面向对象的分类方法和SVM分类来提取研究区域的种植区域,SVM的输入定义是地面对象的光谱特征图像,SVM的输出定义是地面的识别结果数据培训过程中的对象。然后分析了两种分类结果中两种方法的优点和缺点。最后,为了更准确地提取冬小麦信息,我们组合上述两种分类方法并提出了一种新的分类方法V2OAE(矢量对象面积提取)以消除不必要的影响因素,然后冬季小麦种植面积在统计上获得。

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