Image Stitching Algorithm Based on Region Division for Underwater Dam Crack Image

Yuanbo Huang, Zhuo Zhang, Xiaolong Xu
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Abstract

The surface crack of underwater dam is one of the important indexes to evaluate the normal operation of the dam. Complete crack image is an important means to improve the accuracy of evaluation. In view of the limitations of traditional Algorithms in underwater crack image stitching, we propose an underwater dam surface crack image stitching algorithm based on region division(ISA-RD). First of all, an image enhancement algorithm aiming at increasing the number of feature points is used. Secondly, we simplify the process of feature point selection and matching by relying on the features of multiple regions in the local crack image, and improve the matching accuracy by mining the close relationship between the matching of feature points and different regions. Finally, the high matching feature point pairs are used for image fusion. We take the crack image of the real scene as the research object. Compared with the classical image stitching algorithm, the feature point matching algorithm proposed in this paper improves the accuracy of feature point matching. Obviously, the image quality after stitching is improved.
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基于区域划分的水下大坝裂缝图像拼接算法
水下大坝的表面裂缝是评价大坝是否正常运行的重要指标之一。完整的裂纹图像是提高评价精度的重要手段。针对传统水下裂缝图像拼接算法的局限性,提出了一种基于区域划分的水下大坝表面裂缝图像拼接算法(ISA-RD)。首先,采用以增加特征点数量为目标的图像增强算法。其次,依托局部裂纹图像中多个区域的特征,简化特征点选择与匹配过程,挖掘特征点与不同区域匹配之间的密切关系,提高匹配精度;最后,利用高匹配特征点对进行图像融合。我们以真实场景的裂纹图像为研究对象。与经典图像拼接算法相比,本文提出的特征点匹配算法提高了特征点匹配的精度。显然,拼接后的图像质量得到了改善。
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