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Impacts of Different Transformation Models on Remote Sensing Image Registration Accuracy Based on Implicit Similarity

机译:不同变换模型对基于隐含相似性的遥感图像配准精度的影响

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How the different transformation models take effects on the registration accuracy based-on implicit similarity between the remote sensing images is the key point of this paper. For registration between SAR and optical imagery, analyze the imaging characteristic of push-broom optical satellite image and SAR image according to their imaging models; study the impacts taken by terrain fluctuation and different transformation models. The DEM and image pairs are simulated in the experiment, the results show: in region of bigger relief, the larger the registration image size, the greater impacts are taken by different transformation models on registration accuracy. Considering the polynomial transformation model leads to the low searching efficiency, affine transformation model regards as the best model for registration, but it has low accuracy and just applies to small images(such as 200×200). For large image (such as 800×800), 8-parameters transformation model is the best choice (balance accuracy and efficiency), but adding the parameters of transformation model (such as 12-parameters) again cannot significantly improve the registration accuracy.
机译:不同的转换模型如何基于遥感图像之间的隐式相似性对登记精度产生影响是本文的关键点。对于SAR和光学图像之间的登记,根据其成像模型分析推扫帚光学卫星图像和SAR图像的成像特性;研究地形波动和不同转化模型采取的影响。在实验中模拟DEM和图像对,结果显示:在更大的浮雕区域中,登记图像尺寸越大,不同的变换模型对登记精度的不同影响。考虑到多项式变换模型导致低搜索效率,仿射变换模型视为登记的最佳模型,但它具有低精度,并且仅适用于小幅图像(例如200×200)。对于大型图像(如800×800),8参数变换模型是最佳选择(平衡精度和效率),但增加了转换模型(如12参数)的参数再也无法显着提高了登记准确性。

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