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Contribution of Minimum Noise Fraction Transformation of Multi-temporal RADARSAT-2 Polarimetric SAR Data to Cropland Classification

机译:多时相RADARSAT-2极化SAR数据最小噪声分数变换对耕地分类的贡献。

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摘要

Agriculture is an important sector in Canada, and annual crop inventories are required in many agricultural applications. Multi-temporal polarimetric synthetic aperture radar (SAR) data have great potential in crop classification due to its less dependency on weather condition. This study, for the first time, investigated the effects of the Minimum Noise Fraction (MNF) transformation of multi-temporal RADARSAT-2 polarimetric SAR data on the performance of cropland classification through the discussing of the performance of different polarimetric SAR parameter sets, and the impact of the timing of RADARSAT-2 datasets in southwestern Ontario. The random forest classifier was adopted due to its excellent ability in crop classification. The results illustrated that the elements of coherency matrix performed the best in agricultural land cover classification. The multi-temporal polarimetric SAR data acquired from the end of June to November gave the best classification accuracy, and an overall accuracy of 90% can be achieved using two images acquired in the middle of September and October. The MNF transformation can further improve the classification accuracy, and this accuracy was competitive with the accuracy produced using the integration of optical and polarimetric SAR data.
机译:农业是加拿大的重要部门,在许多农业应用中都需要年度作物清单。多时相极化合成孔径雷达(SAR)数据由于对天气条件的依赖性较小,因此在作物分类中具有巨大潜力。本研究首次通过讨论不同极化SAR参数集的性能,研究了多时相RADARSAT-2极化SAR数据的最小噪声分数(MNF)转换对耕地分类性能的影响,以及安大略省西南部RADARSAT-2数据集时序的影响。采用随机森林分类器是由于其在作物分类中的出色能力。结果表明,一致性矩阵的元素在农业土地覆盖分类中表现最好。从6月底到11月采集的多时相极化SAR数据提供了最佳的分类精度,使用9月和10月中旬采集的两幅图像可以达到90%的总体精度。 MNF变换可以进一步提高分类精度,并且该精度与使用光学和极化SAR数据的集成所产生的精度具有竞争力。

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  • 来源
    《Canadian Journal of Remote Sensing》 |2018年第3期|215-231|共17页
  • 作者单位

    Univ Western Ontario, Dept Geog, London, ON, Canada;

    Univ Western Ontario, Dept Geog, London, ON, Canada;

    Univ Western Ontario, Dept Geog, London, ON, Canada;

    Agr & Agri Food Canada, Sci & Technol Branch, Ottawa, ON, Canada;

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