从图像序列到三维重建模型

Zhiyi Zhang, Xuemei Feng, Ni Liu, Nan Geng, Shaojun Hu, Zepeng Wang
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引用次数: 1

摘要

利用简单的设备获取基于图像的三维模型方便、成本低,同时模型生成具有自动化的特点。提出了一种利用序列图像提取物体表面三维点云的方法。为了获得稀疏的三维点云,提出了一种高精度的摄像机自标定方法。自标定方法基于束平差,采用局部全局混合迭代优化。同时,针对多图像匹配中的问题,提出了一种相邻图像匹配策略,提高了匹配速度,保持了匹配精度。然后,采用改进的基于patch的多视立体(PMVS)算法获得密集的三维点云。最后,采用基于Possion分布的三维网格构建方法。实验结果表明,该算法将三角剖分块的数量增加了2.5% ~ 27.9%,将运算时间减少了5.0% ~ 20.7%,并且在大多数情况下减少了三角剖分块的交叉和不匹配。打印出具有更丰富细节的3D模型方便高效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
From Image Sequence to 3D Reconstructed Model
Obtaining 3D model based on images by simple devices is convenient and low-cost, meanwhile the model generation is automatic. The paper proposes a method to extract the 3D point cloud of object surface by a sequence of images. To obtain sparse 3D point clouds, a highly precise method of camera self-calibration is proposed. The self-calibration method is based on the bundle adjustment and uses a localglobal hybrid iterative optimization. Meanwhile, we propose a neighboring image matching strategy to solve the problem in the multiple image matching, which can improve the matching speed and preserve the matching accuracy. Then, dense 3D point clouds can be obtained by our improved Patchedbased Multi-View Stereo(PMVS) algorithm. Finally, we adopt 3D mesh construction method based on Possion distribution. The experimental results show that our algorithm increases the number of triangulation patches by 2.5% 27.9%, reduces the operation time by 5.0% 20.7%, and decreases the cross and mismatch of triangular patches in most cases. It is convenient and efficient to print out 3D models with richer details.
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