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Maize recognition and accuracy evaluation with GF-1 WFV sensor data

机译:利用GF-1 WFV传感器数据进行玉米识别和准确性评估

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As part of the "High-Resolution Earth Observation System", many major projects are being implemented. The first optical satellite (GF-1) in the high-resolution satellite series has completed in-orbit tests and entered the stage of data acquisition. GF-1 owns high resolution and information of wide field view sensor (WFV sensor) and the panchromatic and multispectral sensor (PMS sensor). In this study, GF-1 WFV sensor data with a resolution of 16 m, integrated with Landsat-8 and RapidEye data were selected to recognize maize in Xuchang using Support Vector Machine (SVM) and Spectral Angle Mapper (SAM) method. The results showed that the precision of classification varies greatly among WFV sensors. In particular, WFV3 was of the highest accuracy to identify crops and planting area with accuracy higher than Landsat-8 and close to RapidEye. With regard to WFV1 and WFV4, the application effect was worse and less viable to identify species of complex autumn crops. In brief, the classification accuracy of SVM classifier is better than SAM classifier. It can be also concluded that SVM is more suitable for the identification of crops and planting area of extraction in the study area.
机译:作为“高分辨率地球观测系统”的一部分,正在实施许多重大项目。高分辨率卫星系列中的第一颗光学卫星(GF-1)已完成在轨测试,并进入了数据采集阶段。 GF-1具有高分辨率和宽视场传感器(WFV传感器)以及全色和多光谱传感器(PMS传感器)的信息。在这项研究中,使用支持向量机(SVM)和光谱角度映射器(SAM)方法,选择分辨率为16 m的GF-1 WFV传感器数据,并结合Landsat-8和RapidEye数据,以识别许昌市的玉米。结果表明,WFV传感器的分类精度差异很大。尤其是,WFV3具有最高的识别作物和种植面积的准确度,其准确度高于Landsat-8并接近RapidEye。对于WFV1和WFV4,其应用效果较差,并且无法确定复杂的秋季农作物的种类。简而言之,SVM分类器的分类精度优于SAM分类器。还可以得出结论,支持向量机更适合于在研究区域识别作物和提取物的种植区域。

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