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Using support vector machine (SVM) for agriculture land use mapping with SAR data: Preliminary results from western Canada

机译:使用支持向量机(SVM)用于农业用地使用SAR数据:加拿大西部的初步结果

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Multi-temporal C-band RADARSAT-2 fine quad-pol data (5 scenes) and X-band TerraSAR-X stripmap data (8 scenes) were collected during the 2009 growing season from late May to late end of August. The study site was located in Carman, Manitoba in western Canada. A crop survey was conducted for 441 fields covering a wide range of annual and perennial crops (15 classes) including beans, canola, corn, fallow, field peas, flaxseed, hay/pasture, potato, soybean, sunflower, barley, oat, spring wheat and winter wheat. A supervised support vector machine method was used for image classification. Results revealed that the use of single-date single-frequency SAR data can only achieve marginal success in separating crop classes over regions with complex crop mixtures (15 classes). Better classification accuracies usually occur at the end of the growing season. The C-band SAR image data are generally superior to the X-band dataset. The overall classification accuracies using multi-temporal, single-frequency SAR data are within 50% for mid-season and 75% at the end of the growing season. The integration of RADARSAT-2 and TerraSAR-X data produced more favorable classification results.
机译:2009年5月下旬至8月底,2009年生长季节收集了多时间C波段数据(5场景)和X波段Terrasar-X Stripmap数据(8个场景)。该研究网站位于加拿大西部的马尼托巴省的卡曼。在包括豆类,油菜籽,玉米,休耕,野外豌豆,亚麻籽,干草/牧场,土豆,大豆,向日葵,大麦,燕麦,燕麦,燕麦,燕麦,燕麦,燕麦,燕麦,燕麦,燕麦,燕麦,燕麦,燕麦,燕麦,燕麦,燕麦,燕麦,燕麦小麦和冬小麦。监督支持向量机方法用于图像分类。结果表明,使用单日单频SAR数据只能在分离具有复杂作物混合物(15级)的地区分离作物类别的边际成功。更好的分类准确性通常会发生在不断增长的季节结束时。 C波段SAR图像数据通常优于X波段数据集。使用多时间,单频SAR数据的整体分类精度在季节的50%范围内,而在生长季节结束时占75%。 Radarsat-2和Terrasar-X数据的集成产生了更有利的分类结果。

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