3D Reconstruction Method based on Medical Image Feature Point Matching

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Abstract

Medical 3D image reconstruction is an important image processing step in medical image analysis. How to speed up the speed while improving the accuracy in 3D reconstruction is an important issue. To solve this problem, this paper proposes a 3D reconstruction method based on image feature point matching. By improving SIFT, the initial matching of feature points is realized by using the neighborhood voting method, and then the initial matching points are optimized by the improved RANSAC algorithm, and a new SFM reconstruction method is obtained. The experimental results show that the feature matching rate of this algorithm on Fountain data is 95.42% and the matching speed is 4.751 s. It can be seen that this algorithm can shorten the reconstruction time and obtain sparse point clouds with more reasonable distribution and better reconstruction effect.

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Han, J., Cao, Y., Xu, L., Liang, W., Bo, Q., Wang, J., … Cheng, D. (2022). 3D Reconstruction Method based on Medical Image Feature Point Matching. Computational and Mathematical Methods in Medicine, 2022. https://doi.org/10.1155/2022/9052751

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