Name
Tech. Session XIV - 251
Date & Time
Thursday, June 26, 2025, 5:10 PM - 5:35 PM
Description
Three-dimensional (3D) point clouds have become a popular
means of geometric modeling in many applications, but the
variability of these due to the noise in the scan and
environmental factors can undermine their accuracy and,
further, its usability. More importantly, it is critical to
understand the relationship between these factors,
especially the ones related to the manufacturing processes,
and the variability embedded in the point cloud data.
Conventional methods require either a large labeled
datasets or extensive experience to explore this
relationship, which can be time consuming and prohibitive.
To tackle this issue, this study introduces a Local
Principal Geodesic Analysis (PGA) pipeline for discovering
and quantifying local variance in 3D point clouds.
Specifically, a variant of PGA algorithm is proposed to
project the large set of points in the point cloud data
into a lower dimensional space. A Kruskal-Wallis H test was
used to perform variance analysis across clusters to show
significant differences between clusters (\(p < 0.05\)) and
thus demonstrate feature specific variability. A half ball
and a freeform structure with multiple scans were selected
as case studies to validate the proposed algorithm.
Metrics, such as adjusted Rand Index (ARI) and Normalised
Mutual Information (NMI), are used to validate consistency
in clustering against both objects, with mean values of
0.85 and 0.88 for the half ball, 0.88 and 0.91 for the
freeform object, respectively. These confirm the robustness
of the pipeline to both stability of cluster assignments
across scans and local geometric variability.
Location Name
Crepe Myrtle
Full Address
Hyatt Regency
220 N Main St
Greenville, SC 29601
United States
220 N Main St
Greenville, SC 29601
United States
Session Type
Technical Session
Paper #
NAMRC 251
Author List
Evans Nyanney and Zhaohui Geng
Paper Title
Unveil the Relationship Between Process and Design Embedded in the 3D Point Cloud using Unsupervised Learning
Presenter Name
Evans Nyanney
Session Chair
Clayton Cooper, Kuan-Ming Li
Presenter Email
en596624@ohio.edu