Co-registering the Sentinel-1 SAR and Sentinel-2 optical data of European Space Agency (ESA) is of great importance for many remote sensing applications. However, we find that there are evident misregistration shifts between the Sentinel-1 SAR and Sentinel-2 optical images that are directly downloaded from the official website. To address that, this paper presents a fast and effective registration method for the two types of images. In the proposed method, a block-based scheme is first designed to extract evenly distributed interest points. Then the correspondences are detected by using the similarity of structural features between the SAR and optical images, where the three dimension (3D) phase correlation (PC) is used as the similarity measure for accelerating image matching. Finally, the obtained correspondences are employed to measure the misregistration shifts between the images. Moreover, to eliminate the misregistration, we use some representative geometric transformation models such as polynomial models, projective models, and rational function models for the co-registration of the two types of images, and compare and analyze their registration accuracy under different numbers of control points and different terrains. Six pairs of the Sentinel-1 SAR L1 and Sentinel-2 optical L1C images covering three different terrains are tested in our experiments. Experimental results show that the proposed method can achieve precise correspondences between the images, and the 3rd. Order polynomial achieves the most satisfactory registration results. Its registration accuracy of the flat areas is less than 1.0 10m pixels, and that of the hilly areas is about 1.5 10m pixels, and that of the mountainous areas is between 1.7 and 2.3 10m pixels, which significantly improves the co-registration accuracy of the Sentinel-1 SAR and Sentinel-2 optical images.
翻译:欧洲航天局(欧空局)的Sentinel-1 SAR和Sentinel-2光学数据共同注册,对于许多遥感应用非常重要。然而,我们发现,从官方网站直接下载的Sentinel-1 SAR和Sentinel-2光学图像之间显然存在登记错误的变化,为此,本文件为两种类型的图像提供了一个快速有效的登记方法。在拟议方法中,一个基于街区的计划首先设计以均衡分布的利益点。然后,通过使用SAR和光学图像之间结构特征的相似性来检测通信,其中三个层面(3D)阶段相关关系(PC)被用作加速图像匹配的类似性测量尺度。最后,获得的通信用于测量图像之间的登记错误变化。此外,为了消除错误登记,我们使用一些具有代表性的几何位转换模型,例如10类图像的联合登记模型、投影模型和合理功能模型。比较并分析其在不同控制点和不同地形下的登记准确度,其中三个层面(3D)相位(PC)相位(3)相位(Plentral)相系) 和Sental-II图像区域(Sentrial-I)的精确注册为Sental-Sal-I 和LSental-I) 的精确序列区域,从而显示Sentral-Sental 10Siral1和Sirstalstalalalal 的精确的精确的存储区域为10Staral 和Staralalal 的精确性区域为Staral 。Starmal1,Starmestal1和LStarsal 和Starmestal 。Starsal 。Slation-Starx的精确的精确的精确的注册为Starxxxxxxxxx 。Starxxxxxxxxxxxxxxx 和L1 10 和L1,这可以实现10 和L1 10 Staralalalalalalalalalalalalalal 和L1 和L1 和L1,这可以实现了Sal 和L1 和LSalalal 和LSal-Sal-Sal-Salalalalalal-Sal-Sal-Sal-Star