JOURNAL ARTICLE

Point cloud measurements-uncertainty calculation on spatial-feature based registration

Lijun DingShuguang DaiMU Ping-an

Year: 2018 Journal:   Sensor Review Vol: 39 (1)Pages: 129-136   Publisher: Emerald Publishing Limited

Abstract

Purpose Measurement uncertainty calculation is an important and complicated problem in digitised components inspection. In such inspections, a coordinate measuring machine (CMM) and laser scanner are usually used to get the surface point clouds of the component in different postures. Then, the point clouds are registered to construct fully connected point clouds of the component’s surfaces. However, in most cases, the measurement uncertainty is difficult to estimate after the scanned point cloud has been registered. This paper aims to propose a simplified method for calculating the uncertainty of point cloud measurements based on spatial feature registration. Design/methodology/approach In the proposed method, algorithmic models are used to calculate the point cloud measurement uncertainty based on noncontact measurements of the planes, lines and points of the component and spatial feature registration. Findings The measurement uncertainty based on spatial feature registration is related to the mutual position of registration features and the number of sensor commutation in the scanning process, but not to the spatial distribution of the measured feature. The results of experiments conducted verify the efficacy of the proposed method. Originality/value The proposed method provides an efficient algorithm for calculating the measurement uncertainty of registration point clouds based on part features, and therefore has important theoretical and practical significance in digitised components inspection.

Keywords:
Point cloud Feature (linguistics) Computer science Laser scanning Artificial intelligence Component (thermodynamics) Computer vision Measurement uncertainty Point (geometry) Position (finance) Cloud computing Algorithm Data mining Mathematics Laser Statistics Optics Geometry

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Citation History

Topics

Advanced Measurement and Metrology Techniques
Physical Sciences →  Engineering →  Mechanical Engineering
3D Surveying and Cultural Heritage
Physical Sciences →  Earth and Planetary Sciences →  Geology
Optical measurement and interference techniques
Physical Sciences →  Computer Science →  Computer Vision and Pattern Recognition
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