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首页> 外文期刊>International journal of applied earth observation and geoinformation >Integration of optical and synthetic aperture radar (SAR) images to differentiate grassland and alfalfa in Prairie area
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Integration of optical and synthetic aperture radar (SAR) images to differentiate grassland and alfalfa in Prairie area

机译:整合光学和合成孔径雷达(SAR)图像以区分草原地区的草地和苜蓿

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Alfalfa presents a huge potential biofuel source in the Prairie Provinces of Canada. However, it remains a challenge to find an ideal single satellite sensor to monitor the regional spatial distribution of alfalfa on an annual basis. The primary interest of this study is to identify alfalfa spatial distribution through effectively differentiating alfalfa from grasslands, given their spectral similarity and same growth calendars. MODIS and RADARSAT-2 ScanSAR narrow mode were selected for regional-level grassland and alfalfa differentiation in the Prairie Provinces, due to the high frequency revisit of MODIS, the weather independence of ScanSAR as well as the large area coverage and the complementary characteristics SAR and optical images. Combining MODIS and ScanSAR in differentiating alfalfa and grassland is very challenging, since there is a large spatial resolution difference between MODIS (250 m) and ScanSAR narrow (50 m). This study investigated an innovative image fusion technique for combining MODIS and ScanSAR and obtaining a synthetic image which has the high spatial details derived from ScanSAR and the colour information from MODIS. The field trip was arranged to collect ground truth to label and validate the classification results. The fusion classification result shows significant accuracy improvement when compared with either ScanSAR or MODIS alone or with other commonly-used data combination methods, such as multiple files composites. This study has shown that the image fusion technique used in this study can combine the structural information from high resolution ScanSAR and colour information from MODIS to significantly improve the classification accuracy between alfalfa and grassland.
机译:苜蓿在加拿大大草原省份中具有巨大的潜在生物燃料来源。然而,寻找理想的单个卫星传感器来每年监测苜蓿的区域空间分布仍然是一个挑战。这项研究的主要目的是通过有效区分苜蓿和草原,鉴于它们的光谱相似性和相同的生长历程,从而确定苜蓿的空间分布。由于MODIS的重访频率高,ScanSAR的天气独立性以及大面积覆盖以及SAR和SAR的互补特征,因此选择MODIS和RADARSAT-2 ScanSAR窄模式用于草原省的区域级草地和苜蓿分化。光学图像。将MODIS和ScanSAR结合起来以区分苜蓿和草地非常具有挑战性,因为MODIS(250 m)和ScanSAR窄(50 m)之间存在较大的空间分辨率差异。这项研究研究了一种创新的图像融合技术,该技术融合了MODIS和ScanSAR,并获得了具有合成图像,该合成图像具有从ScanSAR导出的高空间细节和来自MODIS的颜色信息。安排实地考察以收集地面真相,以标记和验证分类结果。与单独使用ScanSAR或MODIS或与其他常用数据组合方法(例如,多个文件组合)相比,融合分类结果显示出显着的准确性提高。这项研究表明,本研究中使用的图像融合技术可以将高分辨率ScanSAR的结构信息与MODIS的颜色信息相结合,从而显着提高苜蓿和草地之间的分类精度。

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