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Position Normalization of Propellant Grain Point Clouds
by
Si, Xuelong
, Zhang, Bin
, Li, Zhihui
, Li, Renfu
, Wang, Junchao
, Tian, Fengnian
in
Algorithms
/ Cluster analysis
/ Clustering
/ Composite materials
/ Composition
/ Deep learning
/ ICP
/ Lasers
/ Mechanical properties
/ Parameter uncertainty
/ point cloud
/ position normalization
/ propellant
/ Propellant grains
/ Propellants
/ Properties
/ RANSAC
/ Registration
/ Rockets
/ Three dimensional models
/ Vector quantization
/ Viscoelasticity
2024
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Position Normalization of Propellant Grain Point Clouds
by
Si, Xuelong
, Zhang, Bin
, Li, Zhihui
, Li, Renfu
, Wang, Junchao
, Tian, Fengnian
in
Algorithms
/ Cluster analysis
/ Clustering
/ Composite materials
/ Composition
/ Deep learning
/ ICP
/ Lasers
/ Mechanical properties
/ Parameter uncertainty
/ point cloud
/ position normalization
/ propellant
/ Propellant grains
/ Propellants
/ Properties
/ RANSAC
/ Registration
/ Rockets
/ Three dimensional models
/ Vector quantization
/ Viscoelasticity
2024
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Do you wish to request the book?
Position Normalization of Propellant Grain Point Clouds
by
Si, Xuelong
, Zhang, Bin
, Li, Zhihui
, Li, Renfu
, Wang, Junchao
, Tian, Fengnian
in
Algorithms
/ Cluster analysis
/ Clustering
/ Composite materials
/ Composition
/ Deep learning
/ ICP
/ Lasers
/ Mechanical properties
/ Parameter uncertainty
/ point cloud
/ position normalization
/ propellant
/ Propellant grains
/ Propellants
/ Properties
/ RANSAC
/ Registration
/ Rockets
/ Three dimensional models
/ Vector quantization
/ Viscoelasticity
2024
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Journal Article
Position Normalization of Propellant Grain Point Clouds
2024
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Overview
Point cloud data obtained from scanning propellant grains with 3D scanning equipment exhibit positional uncertainty in space, posing significant challenges for calculating the relevant parameters of the propellant grains. Therefore, it is essential to normalize the position of each propellant grain’s point cloud. This paper proposes a normalization algorithm for propellant grain point clouds, consisting of two stages, coarse normalization and fine normalization, to achieve high-precision transformations of the point clouds. In the coarse normalization stage, a layer-by-layer feature points detection scheme based on k-dimensional trees (KD-tree) and k-means clustering (k-means) is designed to extract feature points from the propellant grain point cloud. In the fine normalization stage, a rotation angle compensation scheme is proposed to align the fitted symmetry axis of the propellant grain point cloud with the coordinate axes. Finally, comparative experiments with iterative closest point (ICP) and random sample consensus (RANSAC) validate the efficiency of the proposed normalization algorithm.
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