弱纹理小场景三维重建算法研究

Changrui Nai
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引用次数: 0

摘要

三维重建是航空重建、工业测量、医学影像重建、文物保护与修复、虚拟现实等领域的三维重建。然而,传统的三维重建算法由于受到瞬时前景的影响和场景中特征点识别的限制,重建效果不佳。为了解决上述问题,本文采用 LoFT R-SIFT 算法提取弱纹理区域的特征点,增加弱纹理区域特征点的匹配数量,然后引入 ExtremeC3Net 算法剔除场景中动态人像上的特征点;最后,DPT 对 MVS 算法进行改进,进行深度补偿。实验结果证明,该算法的特征点匹配精度提高了 55%,能更好地捕捉场景细节。
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Research on 3D reconstruction algorithms for small scenes with weak texture
3D reconstruction is 3 d reconstruction in aerial reconstruction, industrial measurement, medical image reconstruction, cultural relics preservation and restoration, virtual reality and other fields. However, the traditional 3 D reconstruction algorithm will have a poor reconstruction effect due to the transient foreground influence and the limitation of feature point identification in the scene. To solve the above problems, this paper uses LoFT R-SIFT algorithm to extract the feature points in weak texture area, increase the number of feature points matching in weak texture area, then introduces ExtremeC3Net algorithm to eliminate the feature points on the dynamic portrait in the scene; Finally, DPT improves the MVS algorithm to make deep compensation. The experimental results prove that the feature point matching accuracy of the algorithm is improved by 55%, which can better capture the details of the scene
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