In this paper, we deal with the problem of pose estimation based on point cloud. We modify the Iterative closest face (ICF) algorithm by mathematical techniques, in which a new method to calculate point-face distance with less computational cost is proposed. Then, we combine this algorithm with particle swarm optimization to get a better searched result. PSO is employed because there are few parameters to adjust and it is more efficient than the original searched method in ICF. A set of experiments is conducted, following the statistical analysis of the results. These experiments demonstrate the accuracy and robustness of our algorithm. © 2018 ACM.
Akbar AssaFarrokh Janabi‐Sharifi
Guangliang ZhouDeming WangYi YanChengju LiuQijun Chen
Ritipong WongkhuenkaewSansanee AuephanwiriyakulNipon Theera‐Umpon
Zongming LiuGuodong LiuJianxun LiDong Ye
谭志国鲁敏任戈刘顺发刘顺发中国科学院光束控制重点实验室,成都,610200