Transport Infrastructure Management Based on LiDAR Synthetic Data: A Deep Learning Approach with a ROADSENSE Simulator

被引:0
作者
Comesana-Cebral, Lino [1 ]
Martinez-Sanchez, Joaquin [1 ]
Seoane, Anton Nunez [1 ]
Arias, Pedro [1 ]
机构
[1] Univ Vigo, CINTECX, Appl Geotechnol Grp, Vigo 36310, Spain
关键词
deep learning; forest roads; synthetic LiDAR; 3D scene simulator;
D O I
10.3390/infrastructures9030058
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
In the realm of transportation system management, various remote sensing techniques have proven instrumental in enhancing safety, mobility, and overall resilience. Among these techniques, Light Detection and Ranging (LiDAR) has emerged as a prevalent method for object detection, facilitating the comprehensive monitoring of environmental and infrastructure assets in transportation environments. Currently, the application of Artificial Intelligence (AI)-based methods, particularly in the domain of semantic segmentation of 3D LiDAR point clouds by Deep Learning (DL) models, is a powerful method for supporting the management of both infrastructure and vegetation in road environments. In this context, there is a lack of open labeled datasets that are suitable for training Deep Neural Networks (DNNs) in transportation scenarios, so, to fill this gap, we introduce ROADSENSE (Road and Scenic Environment Simulation), an open-access 3D scene simulator that generates synthetic datasets with labeled point clouds. We assess its functionality by adapting and training a state-of-the-art DL-based semantic classifier, PointNet++, with synthetic data generated by both ROADSENSE and the well-known HELIOS++ (HEildelberg LiDAR Operations Simulator). To evaluate the resulting trained models, we apply both DNNs on real point clouds and demonstrate their effectiveness in both roadway and forest environments. While the differences are minor, the best mean intersection over union (MIoU) values for highway and national roads are over 77%, which are obtained with the DNN trained on HELIOS++ point clouds, and the best classification performance in forested areas is over 92%, which is obtained with the model trained on ROADSENSE point clouds. This work contributes information on a valuable tool for advancing DL applications in transportation scenarios, offering insights and solutions for improved road and roadside management.
引用
收藏
页数:21
相关论文
共 52 条
  • [1] [Anonymous], 2007, P ISPRS WORKSHOP LAS
  • [2] Applanix Corp Homepage, About us
  • [3] Applied Geotechnologies Research Group, ROADSENSE Dataset
  • [4] HELIOS: A MULTI-PURPOSE LIDAR SIMULATION FRAMEWORK FOR RESEARCH, PLANNING AND TRAINING OF LASER SCANNING OPERATIONS WITH AIRBORNE, GROUND-BASED MOBILE AND STATIONARY PLATFORMS
    Bechtold, S.
    Hoefle, B.
    [J]. XXIII ISPRS CONGRESS, COMMISSION III, 2016, 3 (03): : 161 - 168
  • [5] Forest Road Detection Using LiDAR Data and Hybrid Classification
    Bujan, Sandra
    Guerra-Hernandez, Juan
    Gonzalez-Ferreiro, Eduardo
    Miranda, David
    [J]. REMOTE SENSING, 2021, 13 (03) : 1 - 36
  • [6] Effect of errors in ground truth on classification accuracy
    Carlotto, Mark J.
    [J]. INTERNATIONAL JOURNAL OF REMOTE SENSING, 2009, 30 (18) : 4831 - 4849
  • [7] On smoothing of data using Sobolev polynomials
    Castillo, Rolly Czar Joseph
    Mendoza, Renier
    [J]. AIMS MATHEMATICS, 2022, 7 (10): : 19202 - 19220
  • [8] A Handheld LiDAR-Based Semantic Automatic Segmentation Method for Complex Railroad Line Model Reconstruction
    Chen, Junjie
    Su, Qian
    Niu, Yunbin
    Zhang, Zongyu
    Liu, Jinghao
    [J]. REMOTE SENSING, 2023, 15 (18)
  • [9] HEURISTIC GENERATION OF MULTISPECTRAL LABELED POINT CLOUD DATASETS FOR DEEP LEARNING MODELS
    Comesana Cebral, Lino Jose
    Martinez Sanchez, Joaquin
    Rua Fernandez, Erik
    Arias Sanchez, Pedro
    [J]. XXIV ISPRS CONGRESS IMAGING TODAY, FORESEEING TOMORROW, COMMISSION II, 2022, 43-B2 : 571 - 576
  • [10] Individual Tree Segmentation Method Based on Mobile Backpack LiDAR Point Clouds
    Comesana-Cebral, Lino
    Martinez-Sanchez, Joaquin
    Lorenzo, Henrique
    Arias, Pedro
    [J]. SENSORS, 2021, 21 (18)