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Classifying multisensor images by support vector machine in Chongming Dongtan

机译:通过支持传染媒介在崇明东潭的传染媒介机器进行分类

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Optical remote sensing (ORS) technology has been extensively used for the investigation of the environment and resources. Considering it is heavily constrained by the weather conditions, especially in the coastal zone, the round-the-clock SAR (Synthetic Aperture Radar) data are chosen to compensate for the shortcomings of optical data. In this paper, we will use the fusion image of ASAR and TM to identify five land cover types in Chongming Dongtan. And the SVM algorithm is adopted because of its capability to take numerous and heterogeneous parameters into account. Results have been shown that the fusion data of SAR and ORS is particularly suited to account for the rainy and cloudy weather in costal zone. And the SVM algorithm has attained a high level of classification performance with the overall accuracy 90.83%.
机译:光学遥感(ORS)技术已广泛用于调查环境和资源。考虑到它受到天气条件的严重限制,特别是在沿海地区,选择圆时钟SAR(合成孔径雷达)数据以补偿光学数据的缺点。在本文中,我们将使用ASAR和TM的融合图像来识别崇明东南的五种土地覆盖类型。采用SVM算法,因为其能力考虑了许多和异构参数。已经表明,SAR和ORS的融合数据特别适合考虑到肋骨区域的多雨和多云的天气。并且SVM算法达到了高水平的分类性能,整体准确性为90.83%。

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