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An Tensor-Based Corn Mapping Scheme with Radarsat-2 Fully Polarimetric Images

机译:Radarsat-2全极化图像的基于张量的玉米映射方案

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As one of the most essential economic and industrial crops globally, corn holds a very important position in China's agricultural industry. Corn mapping is one of the most concerned fields in agricultural surveillance. However, compared with the utilization of backscattering coefficients, the polarimetric information was not fully discussed in previous corn mapping researches. In this paper, we use the coherency matrix of mid to late term multi-temporal fully polarimetric synthetic aperture radar (FP SAR) data to discriminate corn cultivation areas. The tensor representation is adopted for PolSAR analysis, with the help of multilinear principal component analysis (MPCA) to reduce feature dimensions. The importance of polarimetric information is discussed. This paper illustrates that good corn discrimination could be achieved with only mid to late term FP SAR data.
机译:玉米作为全球最重要的经济和工业作物之一,在中国农业中占有非常重要的地位。玉米测绘是农业监控中最关注的领域之一。但是,与利用反向散射系数相比,以前的玉米作图研究并未充分讨论极化信息。在本文中,我们使用中期至后期的多时间全极化合成孔径雷达(FP SAR)数据的相干矩阵来区分玉米种植区域。张量表示法用于PolSAR分析,借助多线性主成分分析(MPCA)来减少特征尺寸。讨论了极化信息的重要性。本文说明,只有中长期FP SAR数据才能实现良好的玉米区分。

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