A Method for Object Reconstruction Based on Point-cloud Data via 3D Scanning
With the development of computer technology, the reconstruction technologies using point-cloud data from 3D scanner have been widely used. But as the original point-cloud is huge, redundant and may have many noise and holes, the following reconstructing process becomes slow and the reconstructed model may not be accurate. In this paper, a method for reconstructing object based on point-cloud data from 3D scanning is proposed, which adopts the memorymapped file and OpenGL to accelerate point-cloud reading and rendering. In order to simplify point-cloud and reduce noise, the method clusters the original point-cloud first, and then processes it in terms of fitting lines of subclasses via nonlinear least square method. By applying the RBFNN, which is learned using points on the boundary of point-cloud hole, the original point-cloud is patched and finally a simply and complete object point-cloud model is obtained. The experimental results show that the proposed method largely reduces the number of point-cloud but retains its main features, and the error of holepatching is small, which can meet engineering requirements.
Fengxia LI Rong TANG Chen LIU Haikun YU
School of Comp. Sci. & Tech., Beijing Institute of Tech., Haidian, Beijing 100081, China
国际会议
上海
英文
302-306
2010-10-20(万方平台首次上网日期,不代表论文的发表时间)