Interactive Visualization of Large Point Clouds Using an Autotuning Multiresolution Out-Of-Core Strategy

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Interactive Visualization of Large Point Clouds Using an Autotuning Multiresolution Out-Of-Core StrategyDate
2023Citation
D. Teijeiro, M. Amor, R. Doallo, and D. Deibe, "Interactive Visualization of Large Point Clouds Using an Autotuning Multiresolution Out-Of-Core Strategy", The Computer Journal, Vol. 66, Issue 7, July 2023, P. 1802–1816, doi: https://doi.org/10.1093/comjnl/bxac179
Abstract
[Abstract]: Due to the increasingly large amount of data acquired into point clouds, from LiDAR (Light Detection and Ranging) sensors and 2D/3D sensors, massive point clouds processing has become a topic with high interest for several fields. Current client-server applications usually use multiresolution out-of-core proposals; nevertheless, the construction of the data structures required is very time-consuming. Furthermore, these multiresolution approaches present problems regarding point density changes between different levels of detail and artifacts due to the rendering of elements entering and leaving the field of view. We present an autotuning multiresolution out-of-core strategy to avoid these problems. Other objectives are reducing loading times while maintaining low memory requirements, high visualization quality and achieving interactive visualization of massive point clouds. This strategy identifies certain parameters, called performance parameters, and defines a set of premises to obtain the goals mentioned above. The optimal parameter values depend on the number of points per cell in the multiresolution structure. We test our proposal in our web-based visualization software designed to work with the structures and storage format used and display massive point clouds achieving interactive visualization of point clouds with more than 27 billion points.
Keywords
Efficient data structures
LiDAR
Multiresolution
Out-of-core strategy
Web-visualization
LiDAR
Multiresolution
Out-of-core strategy
Web-visualization
Description
Financiado para publicación en acceso aberto: Universidade da Coruña/CISUG
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Atribución-NoComercial-CompartirIgual 4.0 (International)