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Multiview Matching Algorithm for Processing Mobile Sequence Images

机译:用于处理移动序列图像的多视图匹配算法

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摘要

The paper presents a multiview matching algorithm for processing sequence images acquired by a mobile mapping system (MMS). The workflow of the multiview matching algorithm is designed, and the algorithm is based on motion analysis of sequence images in computer vision. To achieve a high multiview matching accuracy, camera lens distortion in sequence images is first corrected, and images can then be resampled. Image points on sequence images are extracted using the Harris operator. The homologous image points are then matched based on correlation coefficients and used to make a robust estimation for a fundamental matrix F between the two adjacent images using the random sample consensus (RANSAC) algorithm. The fundamental matrix F is calculated under the condition of epipolar line constraints. Finally, the trifocal tensor T of the three-view images is calculated to achieve highly accurate triplet image points. These triplet image points are then provided as the initial value for bundle adjustment. The algorithm was tested using a set of sequence images. The results demonstrate that the designed workflow is available and the algorithm is promising in terms of both accuracy and feasibility.
机译:本文提出了一种多视图匹配算法,用于处理由移动地图系统(MMS)获取的序列图像。设计了多视图匹配算法的工作流程,该算法基于计算机视觉中序列图像的运动分析。为了获得较高的多视图匹配精度,首先要校正顺序图像中相机镜头的畸变,然后可以对图像进行重新采样。使用Harris运算符提取序列图像上的图像点。然后,基于相关系数对同源图像点进行匹配,并使用随机样本共识(RANSAC)算法对两个相邻图像之间的基本矩阵F进行稳健的估计。基本矩阵F是在对极线约束条件下计算的。最后,计算三视图图像的三焦点张量T,以实现高度精确的三重态图像点。然后将这些三重态图像点作为初始值进行束调整。使用一组序列图像对算法进行了测试。结果表明,所设计的工作流程是可行的,并且该算法在准确性和可行性方面都很有希望。

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