Feature Selection for Airbone LiDAR Point Cloud Classification

被引:5
|
作者
Kuprowski, Mateusz [1 ]
Drozda, Pawel [2 ]
机构
[1] Visimind Ltd, PL-10683 Olsztyn, Poland
[2] Univ Warmia & Mazury, Fac Math & Comp Sci, PL-10718 Olsztyn, Poland
关键词
LiDAR; feature selection; XGBoost; random forests; multi-scale neighborhood features; power supply network classification;
D O I
10.3390/rs15030561
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
The classification of airborne LiDAR data is a prerequisite for many spatial data elaborations and analysis. In the domain of power supply networks, it is of utmost importance to be able to discern at least five classes for further processing-ground, buildings, vegetation, poles, and catenaries. This process is mainly performed manually by domain experts with the use of advanced point cloud manipulation software. The goal of this paper is to find a set of features which would divide space well enough to achieve accurate automatic classification on all relevant classes within the domain, thus reducing manual labor. To tackle this problem, we propose a single multi-class approach to classify all four basic classes (excluding ground) in a power supply domain with single pass-through, using one network. The proposed solution implements random forests and gradient boosting to create a feature-based per-point classifier which achieved an accuracy and F1 score of over 99% on all tested cases, with the maximum of 99.7% for accuracy and 99.5% for F1 score. Moreover, we achieved a maximum of 81.7% F1 score for the most sparse class. The results show that the proposed set of features for the LiDAR data cloud is effective in power supply line classification.
引用
收藏
页数:20
相关论文
共 50 条
  • [31] Point Cloud Classification and Accuracy Analysis Based on Feature Fusion
    Xiaochen WANG
    Hongchao MA
    Liang ZHANG
    Zhan CAI
    Haichi MA
    JournalofGeodesyandGeoinformationScience, 2021, 4 (03) : 38 - 48
  • [32] LiDAR Point Cloud Registration based on Improved ICP Method and SIFT Feature
    Zheng, Zhongyang
    Li, Yan
    Jun, Wang
    PROCEEDINGS OF 2015 IEEE INTERNATIONAL CONFERENCE ON PROGRESS IN INFORMATCS AND COMPUTING (IEEE PIC), 2015, : 588 - 592
  • [33] Linear-feature-constrained registration of LiDAR point cloud via quaternion
    Wang, Y. (ybwang@cumt.edu.cn), 1600, Editorial Board of Medical Journal of Wuhan University (38):
  • [34] Hybrid feature CNN model for point cloud classification and segmentation
    Zhang, Xinliang
    Fu, Chenlin
    Zhao, Yunji
    Xu, Xiaozhuo
    IET IMAGE PROCESSING, 2020, 14 (16) : 4086 - 4091
  • [35] Lidar Ground Segmentation Method Based on Point Cloud Cluster Combination Feature
    Shao Jingtao
    Du Chongqing
    Zou Bin
    LASER & OPTOELECTRONICS PROGRESS, 2021, 58 (04)
  • [36] Novel CE-CBCE feature extraction method for object classification using a low-density LiDAR point cloud
    Mohd Romlay, Muhammad Rabani
    Mohd Ibrahim, Azhar
    Toha, Siti Fauziah
    De Wilde, Philippe
    Venkat, Ibrahim
    PLOS ONE, 2021, 16 (08):
  • [37] DPFANet: Deep Point Feature Aggregation Network for Classification of Irregular Objects in LIDAR Point Clouds
    Zhang, Shuming
    Xu, Dali
    ELECTRONICS, 2024, 13 (22)
  • [38] Classification of airborne LiDAR point cloud data based on information vector machine
    Liu Z.-Q.
    Li P.-C.
    Chen X.-W.
    Zhang B.-M.
    Guo H.-T.
    Guangxue Jingmi Gongcheng/Optics and Precision Engineering, 2016, 24 (01): : 210 - 219
  • [39] Classification method of LiDAR point cloud based on threedimensional convolutional neural network
    Zhao, Zhongyang
    Cheng, Yinglei
    Shi, Xiaosong
    Qin, Xianxiang
    2018 INTERNATIONAL CONFERENCE ON COMPUTER INFORMATION SCIENCE AND APPLICATION TECHNOLOGY, 2019, 1168
  • [40] Depth Representation of LiDAR Point Cloud with Adaptive Surface Patching for Object Classification
    Lertniphonphan, Kanokphan
    Komorita, Satoshi
    Tasaka, Kazuyuki
    Yanagihara, Hiromasa
    MULTIMEDIA MODELING, MMM 2018, PT II, 2018, 10705 : 367 - 371