Author:
Xu Xueli,Li Kang,Ma Yifei,Geng Guohua,Wang Jingyu,Zhou Mingquan,Cao Xin
Abstract
AbstractTo obtain a higher simplification rate while retaining geometric features, a simplification framework for the point cloud is proposed. Firstly, multi-angle images of the original point cloud are obtained with a virtual camera. Then, feature lines of each image are extracted by deep neural network. Furthermore, according to the proposed mapping relationship between the acquired 2D feature lines and original point cloud, feature points of the point cloud are extracted automatically. Finally, the simplified point cloud is obtained by fusing feature points and simplified non-feature points. The proposed simplification method is applied to four data sets and compared with the other six algorithms. The experimental results demonstrate that our proposed simplification method has the superiority in terms of both retaining geometric features and high simplification rate.
Funder
Education Department of Shaanxi Province
National Key Research and Development Program of China
Key Research and Development Program of Shaanxi Province
Major research and development project of Qinghai
China Post-doctoral Science Foundation
Young Talent Support Program of the Shaanxi Association for Science and Technology
Publisher
Springer Science and Business Media LLC
Cited by
8 articles.
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