Applied Sciences (Jun 2021)

A Novel Preprocessing Method for Dynamic Point-Cloud Compression

  • Mun-yong Lee,
  • Sang-ha Lee,
  • Kye-dong Jung,
  • Seung-hyun Lee,
  • Soon-chul Kwon

DOI
https://doi.org/10.3390/app11135941
Journal volume & issue
Vol. 11, no. 13
p. 5941

Abstract

Read online

Computer-based data processing capabilities have evolved to handle a lot of information. As such, the complexity of three-dimensional (3D) models (e.g., animations or real-time voxels) containing large volumes of information has increased exponentially. This rapid increase in complexity has led to problems with recording and transmission. In this study, we propose a method of efficiently managing and compressing animation information stored in the 3D point-clouds sequence. A compressed point-cloud is created by reconfiguring the points based on their voxels. Compared with the original point-cloud, noise caused by errors is removed, and a preprocessing procedure that achieves high performance in a redundant processing algorithm is proposed. The results of experiments and rendering demonstrate an average file-size reduction of 40% using the proposed algorithm. Moreover, 13% of the over-lap data are extracted and removed, and the file size is further reduced.

Keywords