TY - JOUR
T1 - SHREC 2022
T2 - Fitting and recognition of simple geometric primitives on point clouds
AU - Romanengo, Chiara
AU - Raffo, Andrea
AU - Biasotti, Silvia
AU - Falcidieno, Bianca
AU - Fotis, Vlassis
AU - Romanelis, Ioannis
AU - Psatha, Eleftheria
AU - Moustakas, Konstantinos
AU - Sipiran, Ivan
AU - Nguyen, Quang Thuc
AU - Chu, Chi Bien
AU - Nguyen-Ngoc, Khoi Nguyen
AU - Vo, Dinh Khoi
AU - To, Tuan An
AU - Nguyen, Nham Tan
AU - Le-Pham, Nhat Quynh
AU - Nguyen, Hai Dang
AU - Tran, Minh Triet
AU - Qie, Yifan
AU - Anwer, Nabil
N1 - Publisher Copyright:
© 2022 Elsevier Ltd
PY - 2022/10
Y1 - 2022/10
N2 - This paper presents the methods that have participated in the SHREC 2022 track on the fitting and recognition of simple geometric primitives on point clouds. As simple primitives we mean the classical surface primitives derived from constructive solid geometry, i.e., planes, spheres, cylinders, cones and tori. The aim of the track is to evaluate the quality of automatic algorithms for fitting and recognizing geometric primitives on point clouds. Specifically, the goal is to identify, for each point cloud, its primitive type and some geometric descriptors. For this purpose, we created a synthetic dataset, divided into a training set and a test set, containing segments perturbed with different kinds of point cloud artifacts. Among the six participants to this track, two are based on direct methods, while four are either fully based on deep learning or combine direct and neural approaches. The performance of the methods is evaluated using various classification and approximation measures.
AB - This paper presents the methods that have participated in the SHREC 2022 track on the fitting and recognition of simple geometric primitives on point clouds. As simple primitives we mean the classical surface primitives derived from constructive solid geometry, i.e., planes, spheres, cylinders, cones and tori. The aim of the track is to evaluate the quality of automatic algorithms for fitting and recognizing geometric primitives on point clouds. Specifically, the goal is to identify, for each point cloud, its primitive type and some geometric descriptors. For this purpose, we created a synthetic dataset, divided into a training set and a test set, containing segments perturbed with different kinds of point cloud artifacts. Among the six participants to this track, two are based on direct methods, while four are either fully based on deep learning or combine direct and neural approaches. The performance of the methods is evaluated using various classification and approximation measures.
KW - Fitting primitives
KW - Geometric primitives
KW - Primitive descriptors
KW - Primitive recognition
KW - SHREC
UR - http://www.scopus.com/inward/record.url?scp=85134263085&partnerID=8YFLogxK
U2 - 10.1016/j.cag.2022.07.004
DO - 10.1016/j.cag.2022.07.004
M3 - Article
AN - SCOPUS:85134263085
SN - 0097-8493
VL - 107
SP - 32
EP - 49
JO - Computers and Graphics (Pergamon)
JF - Computers and Graphics (Pergamon)
ER -