An Efficient and General Framework for Aerial Point Cloud Classification in Urban Scenarios

被引:15
|
作者
Ozdemir, Emre [1 ,2 ]
Remondino, Fabio [2 ]
Golkar, Alessandro [1 ]
机构
[1] Skolkovo Inst Technol Skoltech, Moscow 143026, Russia
[2] Bruno Kessler Fdn FBK, 3D Opt Metrol 3DOM Unit, I-38123 Trento, Italy
关键词
aerial point cloud; classification; AI; machine learning; deep learning; AIRBORNE LIDAR; SEMANTIC SEGMENTATION; NETWORK; FEATURES;
D O I
10.3390/rs13101985
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
With recent advances in technologies, deep learning is being applied more and more to different tasks. In particular, point cloud processing and classification have been studied for a while now, with various methods developed. Some of the available classification approaches are based on specific data source, like LiDAR, while others are focused on specific scenarios, like indoor. A general major issue is the computational efficiency (in terms of power consumption, memory requirement, and training/inference time). In this study, we propose an efficient framework (named TONIC) that can work with any kind of aerial data source (LiDAR or photogrammetry) and does not require high computational power while achieving accuracy on par with the current state of the art methods. We also test our framework for its generalization ability, showing capabilities to learn from one dataset and predict on unseen aerial scenarios.
引用
收藏
页数:21
相关论文
共 50 条
  • [31] PointGL: A Simple Global-Local Framework for Efficient Point Cloud Analysis
    Li, Jianan
    Wang, Jie
    Xu, Tingfa
    IEEE TRANSACTIONS ON MULTIMEDIA, 2024, 26 : 6931 - 6942
  • [32] Automated Simulation Framework for Urban Wind Environments Based on Aerial Point Clouds and Deep Learning
    Sun, Chujin
    Zhang, Fan
    Zhao, Pengju
    Zhao, Xinyi
    Huang, Yuli
    Lu, Xinzheng
    REMOTE SENSING, 2021, 13 (12)
  • [33] Curb detection in urban traffic scenarios using LiDARs point cloud and semantically segmented color images
    Deac, Selma Evelyn Catalina
    Giosan, Ion
    Nedevschi, Sergiu
    2019 IEEE INTELLIGENT TRANSPORTATION SYSTEMS CONFERENCE (ITSC), 2019, : 3433 - 3440
  • [34] AERIAL POINT CLOUD CLASSIFICATION USING AN ALTERNATIVE APPROACH FOR THE DYNAMIC COMPUTATION OF K-NEAREST NEIGHBORS
    Parvu, Iuliana Maria
    Ozdemir, E.
    Remondino, F.
    JOURNAL OF APPLIED ENGINEERING SCIENCES, 2020, 10 (02) : 155 - 162
  • [35] Effectiveness of Deep Learning Trained on SynthCity Data for Urban Point-Cloud Classification
    Spiegel, Steven
    Shanks, Casey
    Chen, Jorge
    PHOTOGRAMMETRIC ENGINEERING AND REMOTE SENSING, 2022, 88 (02): : 113 - 120
  • [36] Point Cloud Classification Model Based on a Dual-Input Deep Network Framework
    Zhai, Ruifeng
    Li, Xueyan
    Wang, Zhenxin
    Guo, Shuxu
    Hou, Shuzhao
    Hou, Yu
    Gao, Fengli
    Song, Junfeng
    IEEE ACCESS, 2020, 8 : 55991 - 55999
  • [37] Path planning for aerial mobility in urban scenarios: the SMARTGO project
    Fasano, Giancarmine
    Causa, Flavia
    Franzone, Armando
    Piccolo, Carmela
    Cricelli, Livio
    Mennella, Alberto
    Pisacane, Valerio
    2022 IEEE INTERNATIONAL WORKSHOP ON METROLOGY FOR AEROSPACE (IEEE METROAEROSPACE 2022), 2022, : 124 - 129
  • [38] Droplet size spectra classification categories in aerial application scenarios
    Hewitt, A. J.
    CROP PROTECTION, 2008, 27 (09) : 1284 - 1288
  • [39] Metrics for aerial, urban lidar point clouds
    Stanley, Michael H.
    Laefer, Debra F.
    ISPRS JOURNAL OF PHOTOGRAMMETRY AND REMOTE SENSING, 2021, 175 : 268 - 281
  • [40] Feature enhancing aerial LiDAR point cloud refinement
    Gao, Zhenzhen
    Neumann, Ulrich
    THREE-DIMENSIONAL IMAGE PROCESSING, MEASUREMENT (3DIPM), AND APPLICATIONS 2014, 2014, 9013