Article (Scientific journals)
3D point cloud semantic augmentation: Instance segmentation of 360◦ panoramas by deep learning techniques
Karara, Ghizlane; Hajji, Rafika; Poux, Florent
2021In Remote Sensing, 13 (18), p. 3647
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Keywords :
3D point cloud; 3D projection; Deep learning; I point cloud semantics; Instance segmentation; Panoramic image; Semantic augmentation; Convolution neural network; Generalisation; Learning architectures; Learning techniques; Research fields; Segmentation results; Semantic augmentations; Virtual camera; Earth and Planetary Sciences (all); General Earth and Planetary Sciences
Abstract :
[en] Semantic augmentation of 3D point clouds is a challenging problem with numerous real-world applications. While deep learning has revolutionised image segmentation and classification, its impact on point cloud is an active research field. In this paper, we propose an instance segmentation and augmentation of 3D point clouds using deep learning architectures. We show the potential of an indirect approach using 2D images and a Mask R-CNN (Region-Based Convolution Neural Network). Our method consists of four core steps. We first project the point cloud onto panoramic 2D images using three types of projections: spherical, cylindrical, and cubic. Next, we homogenise the resulting images to correct the artefacts and the empty pixels to be comparable to images available in common training libraries. These images are then used as input to the Mask R-CNN neural network, designed for 2D instance segmentation. Finally, the obtained predictions are reprojected to the point cloud to obtain the segmentation results. We link the results to a context-aware neural network to augment the semantics. Several tests were performed on different datasets to test the adequacy of the method and its potential for generalisation. The developed algorithm uses only the attributes X, Y, Z, and a projection centre (virtual camera) position as inputs.
Disciplines :
Computer science
Author, co-author :
Karara, Ghizlane;  College of Geomatic Sciences and Surveying Engineering, Institute of Agronomy and Veterinary Medicine, Rabat, Morocco
Hajji, Rafika ;  College of Geomatic Sciences and Surveying Engineering, Institute of Agronomy and Veterinary Medicine, Rabat, Morocco
Poux, Florent  ;  Université de Liège - ULiège > Département de géographie > Unité de Géomatique - Topographie et géométrologie
Language :
English
Title :
3D point cloud semantic augmentation: Instance segmentation of 360◦ panoramas by deep learning techniques
Publication date :
September 2021
Journal title :
Remote Sensing
eISSN :
2072-4292
Publisher :
MDPI
Volume :
13
Issue :
18
Pages :
3647
Peer reviewed :
Peer Reviewed verified by ORBi
Available on ORBi :
since 07 June 2022

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