PointNet++ Network Architecture with Individual Point Level and Global Features on Centroid for ALS Point Cloud Classification

Airborne laser scanning (ALS) point cloud has been widely used in the fields of ground powerline surveying, forest monitoring, urban modeling, and so on because of the great convenience it brings to people’s daily life. However, the sparsity and uneven distribution of point clouds increases the diff...

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Main Authors: Yang Chen, Guanlan Liu, Yaming Xu, Pai Pan, Yin Xing
Format: Article
Language:English
Published: MDPI AG 2021-01-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/13/3/472
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author Yang Chen
Guanlan Liu
Yaming Xu
Pai Pan
Yin Xing
author_facet Yang Chen
Guanlan Liu
Yaming Xu
Pai Pan
Yin Xing
author_sort Yang Chen
collection DOAJ
description Airborne laser scanning (ALS) point cloud has been widely used in the fields of ground powerline surveying, forest monitoring, urban modeling, and so on because of the great convenience it brings to people’s daily life. However, the sparsity and uneven distribution of point clouds increases the difficulty of setting uniform parameters for semantic classification. The PointNet++ network is an end-to-end learning network for irregular point data and highly robust to small perturbations of input points along with corruption. It eliminates the need to calculate costly handcrafted features and provides a new paradigm for 3D understanding. However, each local region in the output is abstracted by its centroid and local feature that encodes the centroid’s neighborhood. The feature learned on the centroid point may not contain relevant information of itself for random sampling, especially in large-scale neighborhood balls. Moreover, the centroid point’s global-level information in each sample layer is also not marked. Therefore, this study proposed a modified PointNet++ network architecture which concentrates the point-level and global features on the centroid point towards the local features to facilitate classification. The proposed approach also utilizes a modified Focal Loss function to solve the extremely uneven category distribution on ALS point clouds. An elevation- and distance-based interpolation method is also proposed for the objects in ALS point clouds which exhibit discrepancies in elevation distributions. The experiments on the Vaihingen dataset of the International Society for Photogrammetry and Remote Sensing and the GML(B) 3D dataset demonstrate that the proposed method which provides additional contextual information to support classification achieves high accuracy with simple discriminative models and new state-of-the-art performance in power line categories.
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spelling doaj.art-ad26edbf6a8f463084e9391edfb4b52c2023-12-03T15:11:39ZengMDPI AGRemote Sensing2072-42922021-01-0113347210.3390/rs13030472PointNet++ Network Architecture with Individual Point Level and Global Features on Centroid for ALS Point Cloud ClassificationYang Chen0Guanlan Liu1Yaming Xu2Pai Pan3Yin Xing4School of Geodesy and Geomatics, Wuhan University, Wuhan 430079, ChinaSchool of Geodesy and Geomatics, Wuhan University, Wuhan 430079, ChinaSchool of Geodesy and Geomatics, Wuhan University, Wuhan 430079, ChinaSchool of Geodesy and Geomatics, Wuhan University, Wuhan 430079, ChinaSchool of Earth Sciences and Engineering, Hohai University, Nanjing 211100, ChinaAirborne laser scanning (ALS) point cloud has been widely used in the fields of ground powerline surveying, forest monitoring, urban modeling, and so on because of the great convenience it brings to people’s daily life. However, the sparsity and uneven distribution of point clouds increases the difficulty of setting uniform parameters for semantic classification. The PointNet++ network is an end-to-end learning network for irregular point data and highly robust to small perturbations of input points along with corruption. It eliminates the need to calculate costly handcrafted features and provides a new paradigm for 3D understanding. However, each local region in the output is abstracted by its centroid and local feature that encodes the centroid’s neighborhood. The feature learned on the centroid point may not contain relevant information of itself for random sampling, especially in large-scale neighborhood balls. Moreover, the centroid point’s global-level information in each sample layer is also not marked. Therefore, this study proposed a modified PointNet++ network architecture which concentrates the point-level and global features on the centroid point towards the local features to facilitate classification. The proposed approach also utilizes a modified Focal Loss function to solve the extremely uneven category distribution on ALS point clouds. An elevation- and distance-based interpolation method is also proposed for the objects in ALS point clouds which exhibit discrepancies in elevation distributions. The experiments on the Vaihingen dataset of the International Society for Photogrammetry and Remote Sensing and the GML(B) 3D dataset demonstrate that the proposed method which provides additional contextual information to support classification achieves high accuracy with simple discriminative models and new state-of-the-art performance in power line categories.https://www.mdpi.com/2072-4292/13/3/472PointNet++ networkpoint-level and global information on centroid pointmodified focal loss functionelevation- and distance-based interpolationALS point clouds
spellingShingle Yang Chen
Guanlan Liu
Yaming Xu
Pai Pan
Yin Xing
PointNet++ Network Architecture with Individual Point Level and Global Features on Centroid for ALS Point Cloud Classification
Remote Sensing
PointNet++ network
point-level and global information on centroid point
modified focal loss function
elevation- and distance-based interpolation
ALS point clouds
title PointNet++ Network Architecture with Individual Point Level and Global Features on Centroid for ALS Point Cloud Classification
title_full PointNet++ Network Architecture with Individual Point Level and Global Features on Centroid for ALS Point Cloud Classification
title_fullStr PointNet++ Network Architecture with Individual Point Level and Global Features on Centroid for ALS Point Cloud Classification
title_full_unstemmed PointNet++ Network Architecture with Individual Point Level and Global Features on Centroid for ALS Point Cloud Classification
title_short PointNet++ Network Architecture with Individual Point Level and Global Features on Centroid for ALS Point Cloud Classification
title_sort pointnet network architecture with individual point level and global features on centroid for als point cloud classification
topic PointNet++ network
point-level and global information on centroid point
modified focal loss function
elevation- and distance-based interpolation
ALS point clouds
url https://www.mdpi.com/2072-4292/13/3/472
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AT paipan pointnetnetworkarchitecturewithindividualpointlevelandglobalfeaturesoncentroidforalspointcloudclassification
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