Javascript must be enabled to continue!
MPCR-Net: Multiple Partial Point Clouds Registration Network Using a Global Template
View through CrossRef
With the advancement of photoelectric technology and computer image processing technology, the visual measurement method based on point clouds is gradually applied to the 3D measurement of large workpieces. Point cloud registration is a key step in 3D measurement, and its registration accuracy directly affects the accuracy of 3D measurements. In this study, we designed a novel MPCR-Net for multiple partial point cloud registration networks. First, an ideal point cloud was extracted from the CAD model of the workpiece and was used as the global template. Next, a deep neural network was used to search for the corresponding point groups between each partial point cloud and the global template point cloud. Then, the rigid body transformation matrix was learned according to these correspondence point groups to realize the registration of each partial point cloud. Finally, the iterative closest point algorithm was used to optimize the registration results to obtain a final point cloud model of the workpiece. We conducted point cloud registration experiments on untrained models and actual workpieces, and by comparing them with existing point cloud registration methods, we verified that the MPCR-Net could improve the accuracy and robustness of the 3D point cloud registration.
Title: MPCR-Net: Multiple Partial Point Clouds Registration Network Using a Global Template
Description:
With the advancement of photoelectric technology and computer image processing technology, the visual measurement method based on point clouds is gradually applied to the 3D measurement of large workpieces.
Point cloud registration is a key step in 3D measurement, and its registration accuracy directly affects the accuracy of 3D measurements.
In this study, we designed a novel MPCR-Net for multiple partial point cloud registration networks.
First, an ideal point cloud was extracted from the CAD model of the workpiece and was used as the global template.
Next, a deep neural network was used to search for the corresponding point groups between each partial point cloud and the global template point cloud.
Then, the rigid body transformation matrix was learned according to these correspondence point groups to realize the registration of each partial point cloud.
Finally, the iterative closest point algorithm was used to optimize the registration results to obtain a final point cloud model of the workpiece.
We conducted point cloud registration experiments on untrained models and actual workpieces, and by comparing them with existing point cloud registration methods, we verified that the MPCR-Net could improve the accuracy and robustness of the 3D point cloud registration.
Related Results
Point Cloud Registration Based on Multiparameter Functional
Point Cloud Registration Based on Multiparameter Functional
The registration of point clouds in a three-dimensional space is an important task in many areas of computer vision, including robotics and autonomous driving. The purpose of regis...
Exploring Large Language Models Integration in the Histopathologic Diagnosis of Skin Diseases: A Comparative Study
Exploring Large Language Models Integration in the Histopathologic Diagnosis of Skin Diseases: A Comparative Study
Abstract
Introduction
The exact manner in which large language models (LLMs) will be integrated into pathology is not yet fully comprehended. This study examines the accuracy, bene...
Brain CT Registration Using Hybrid Supervised Convolutional Neural Network
Brain CT Registration Using Hybrid Supervised Convolutional Neural Network
Abstract
Background: Brain computed tomography (CT) image registration is an essential step in the image evaluation of acute cerebrovascular disease (ACVD). Due to the comp...
Developping a new cloud resolving model for Titan’s methane clouds
Developping a new cloud resolving model for Titan’s methane clouds
Titan is the largest moon of Saturn, with a radius around 2575 km, and it is surrounded by a thick atmosphere composed of nitrogen, methane, and many other organic compounds. The t...
Assessment of the Status of Birth Registration in Gamo Gofa Zone and Konso Woreda, SNNPR, Ethiopia
Assessment of the Status of Birth Registration in Gamo Gofa Zone and Konso Woreda, SNNPR, Ethiopia
Abstract
Background: According to the monitoring results in Africa, the regional average completeness rate of birth registration has increased from around 40% to 56% from 2...
DeepMatch: Toward Lightweight in Point Cloud Registration
DeepMatch: Toward Lightweight in Point Cloud Registration
From source to target, point cloud registration solves for a rigid body transformation that aligns the two point clouds. IterativeClosest Point (ICP) and other traditional algorith...
MSG-Point-GAN: Multi-Scale Gradient Point GAN for Point Cloud Generation
MSG-Point-GAN: Multi-Scale Gradient Point GAN for Point Cloud Generation
The generative adversarial network (GAN) has recently emerged as a promising generative model. Its application in the image field has been extensive, but there has been little rese...
Fast color point cloud registration based on virtual viewpoint image
Fast color point cloud registration based on virtual viewpoint image
With the increase of point cloud scale, the time required by traditional ICP-related point cloud registration methods increases dramatically, which cannot meet the registration req...

