Zhang Kai, Wang Xin, Yang Fanlin, Ai Bo, Zhu Jinshan
Opt Express. 2021 Apr 26;29(9):13359-13372. doi: 10.1364/OE.422866.
Multispectral imaging plays a significant role in coastal mapping and monitoring applications. For tasks involving the integration of multiple overlapped images, precise co-registration of the multisource satellite images is a crucial preliminary step. However, due to the limited terrestrial area and insufficient landscape features, the traditional methods become less efficient or even invalid in offshore island environments. This study addresses the problem by exploring the feasibility of using bathymetry information for geometric registration of satellite imagery. Instead of using the ground control points (GCPs) or extracting the tie points from the landscape features, the band ratio values are extracted from the multispectral images and are subsequently matched between different images through a correlation-based similarity measure. By searching the optimum correlation within the positioning uncertainty radius, the translation between two satellite images is estimated. Thus, the geometric inconsistency between the multispectral images of different sources and resolutions is effectively reduced. This result is obtained by using the ample bathymetry features without the aid of the GCPs and the in-situ bathymetry data. The experimental results using GeoEye-1, Sentinel-2, and Landsat-8 images at Ganquan Island show that for an island setting with a limited terrestrial area, the developed method achieves sub-pixel registration accuracy (less than 2 m) in planimetry. The effect of the nonlinearity and outliers are accounted for using the Spearman correlation measure. The improvement in image alignment enables the integration of multispectral images of different sources and resolutions for producing an accurate and consistent interpretation for coastal comparative and synergistic applications.
多光谱成像在海岸测绘和监测应用中发挥着重要作用。对于涉及多个重叠图像整合的任务,多源卫星图像的精确配准是关键的初步步骤。然而,由于陆地面积有限且景观特征不足,传统方法在近海岛屿环境中效率降低甚至失效。本研究通过探索利用测深信息进行卫星图像几何配准的可行性来解决这一问题。不是使用地面控制点(GCP)或从景观特征中提取同名点,而是从多光谱图像中提取波段比值,随后通过基于相关性的相似性度量在不同图像之间进行匹配。通过在定位不确定半径内搜索最佳相关性,估计两幅卫星图像之间的平移。因此,有效减少了不同源和分辨率的多光谱图像之间的几何不一致性。这一结果是在不借助GCP和现场测深数据的情况下,利用丰富的测深特征获得的。在甘泉岛使用GeoEye-1、哨兵-2和陆地卫星8号图像的实验结果表明,对于陆地面积有限的岛屿环境,所开发的方法在平面测量中实现了亚像素配准精度(小于2米)。使用斯皮尔曼相关性度量考虑了非线性和异常值的影响。图像配准的改进使得能够整合不同源和分辨率的多光谱图像,以便为海岸比较和协同应用生成准确一致的解释。