Multi-view point clouds registration method based on planar target
-
摘要: 在大型物体三维视觉测量中,多视点云的对齐是其关键技术之一.设计了一种带有多个间距已知的角点作为特征点的平面靶标.靶标置于视觉传感器在2个不同位置测量的公共区域,2次测得特征点三维坐标.用靶标上任意3个非共线特征点的三维坐标建立单位正交基,从而求得多视点云坐标系初始变换矩阵.以初始对齐后的对应特征点之间距离平方和建立目标函数,并引入距离控制来增加约束条件,以3点求得的坐标变换矩阵为初值,采用Levenberg-Marquardt优化方法解出最优的坐标变换矩阵.采用双目视觉传感器对一石膏像在2个位置进行了测量,实验结果表明该对齐方法简单可靠,优化后的对齐精度比优化前提高了约31%.Abstract: Multi-view point clouds registration is one of the key techniques in 3D vision measurement for large object. A planar target with some corners as feature points was designed. The distances between those feature points were accurately known. The target was placed at the common region which was measured by a vision sensor at two different view-points, and the vision sensor measured the 3D coordinates of the feature points twice. By establishing unit orthogonal basis using 3 arbitrary non-colinear points on the target, the original coordinate frame transformation matrix for multi-view point clouds was found. An objective function for the sum of distances′ squares between the correspondent feature points was established after original registration, and the distances control was introduced to increase constraint. The optimal results were finally estimated by Levenberg-Marquardt optimization algorithm taking original coordinate frame transformation matrix as the initial value. A plaster model was measured by a binocular vision sensor at two positions. The experimental results show that the proposed registration method is simple and reliable, and the registration accuracy after optimizing is improved by about 31%.
-
Key words:
- multi-view point cloud /
- registration /
- planar target /
- optimization
-
[1] 李鑫,张广军,魏振忠. 基于RBF神经网络的结构光三维视觉检测方法[J].北京航空航天大学学报,2002,28(3):265-268 Li Xin, Zhang Guangjun, Wei Zhenzhong. Method for structured light based 3D vision inspection based on RBF neural network[J]. Journal of Beijing University of Aeronautics and Astronautics, 2002, 28(3):265-268(in Chinese) [2] 韩耘,马利,何世平,等.回转体形状检测的数据拼接法研究[J].中国科学技术大学学报,2003,33(6):282-286 Han Yun, Ma Li, He Shiping, et al. A study on data combination method in topography measurement of revolving objects[J]. Journal of University of Science and Technology of China, 2003, 33(6):282-286(in Chinese) [3] 龙玺,钟约先,李仁举,等.结构光三维扫描测量的三维拼接技术[J]. 清华大学学报, 2002, 42(4):477-480 Long Xi, Zhong Yuexian, Li Renju, et al. 3-D surface integration in structured light 3-D scanning[J]. Journal of Tsinghua University, 2002,42(4):477-480(in Chinese) [4] 张顺德,卢秉恒,丁玉成.光学三维型面分区域测量数据的拼接研究[J].中国激光, 2001, 28(6):533-536 Zhang Shunde, Lu Bingheng, Ding Yucheng. Study on data registration of subdivided shapes in optical 3-D profilometry [J]. Chinese Journal of Lasers, 2001, 28(6):533-536(in Chinese) [5] 李晓星,康绍峥,周贤宾.立体视觉与空间编码技术相结合的非接触三维曲面测量系统[J].中国机械工程, 2004,15(9):806-809 Li Xiaoxing, Kang Shaozheng, Zhou Xianbin. Non-contact 3D surface measurement system based on binocular vision and spatial code[J]. China Mechanical Engineering, 2004, 15(9):806-809(in Chinese) [6] Besl P J, McKay N D. A method for registration of 3-D shapes . IEEE Transactions on Pattern Analysis and Machine Intelligence, 1992, 14(2):239-256 [7] Bergevin R, Soucy M, Gagnon H, et al. Towards a general multi-view registration technique[J]. IEEE Transactions on Pattern Analysis and Machine Intelligence, 1996, 18(5):540-547 [8] Fan K C, Tsai T H. Optimal shape error analysis of the matching image for a free-form surface[J]. Robotics and Computer Integrated Manufacturing, 2001,17:215-222 [9] 席少霖.非线性最优化方法[M].北京:高等教育出版社,1992 Xi Shaolin. Non-linear optimization method[M]. Beijing:Higher Education Press, 1992(in Chinese)
点击查看大图
计量
- 文章访问数: 3028
- HTML全文浏览量: 99
- PDF下载量: 987
- 被引次数: 0