Forest Road Detection Using LiDAR Data and Hybrid Classification

被引:22
作者
Bujan, Sandra [1 ,2 ]
Guerra-Hernandez, Juan [3 ,4 ]
Gonzalez-Ferreiro, Eduardo [5 ]
Miranda, David [1 ,2 ]
机构
[1] Univ Santiago de Compostela, Dept Ingn Agroforestal, GI 1934 TB LaboraTe, Escola Politecn Super Ingn, Campus Lugo, Lugo 27002, Spain
[2] Univ Santiago de Compostela, IBADER, Escola Politecn Super Ingn, Campus Lugo, Lugo 27002, Spain
[3] Fdn CEL, Ctr Iniciat Empresariais, 3edata, O Palomar S-N, Lugo 27004, Spain
[4] Univ Lisbon, Sch Agr, Forest Res Ctr, Inst Super Agron ISA, P-1349017 Lisbon, Portugal
[5] Univ Leon, Dept Tecnol Minera Topog & Estruct, GI 202 GEOINCA, Av Astorga 15, Ponferrada 24401, Spain
关键词
forest network extraction; object; pixel based classification; random forest; importance of variables; quality measures; sensitivity analysis; LAND-COVER CLASSIFICATION; OBJECT-BASED APPROACH; LOW-DENSITY LIDAR; AIRBORNE LIDAR; RADIOMETRIC CORRECTION; ACCURACY ASSESSMENT; IMAGE; AREAS; PLANTATIONS; EXTRACTION;
D O I
10.3390/rs13030393
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Knowledge about forest road networks is essential for sustainable forest management and fire management. The aim of this study was to assess the accuracy of a new hierarchical-hybrid classification tool (HyClass) for mapping paved and unpaved forest roads with LiDAR data. Bare-earth and low-lying vegetation were also identified. For this purpose, a rural landscape (area 70 ha) in northwestern Spain was selected for study, and a road network map was extracted from the cadastral maps as the ground truth data. The HyClass tool is based on a decision tree which integrates segmentation processes at local scale with decision rules. The proposed approach yielded an overall accuracy (OA) of 96.5%, with a confidence interval (CI) of 94.0-97.6%, representing an improvement over pixel-based classification (OA = 87.0%, CI = 83.7-89.8%) using Random Forest (RF). In addition, with the HyClass tool, the classification precision varied significantly after reducing the original point density from 8.7 to 1 point/m2. The proposed method can provide accurate road mapping to support forest management as an alternative to pixel-based RF classification when the LiDAR point density is higher than 1 point/m2.
引用
收藏
页码:1 / 36
页数:36
相关论文
共 96 条
[91]  
Wiedemann C., 1998, INT J COMPUT VIS, V12, P172
[92]   Scale Issues in Remote Sensing: A Review on Analysis, Processing and Modeling [J].
Wu, Hua ;
Li, Zhao-Liang .
SENSORS, 2009, 9 (03) :1768-1793
[93]   Road Extraction from High-Resolution Remote Sensing Imagery Using Deep Learning [J].
Xu, Yongyang ;
Xie, Zhong ;
Feng, Yaxing ;
Chen, Zhanlong .
REMOTE SENSING, 2018, 10 (09)
[94]   Object-based classification of QuickBird image and low point density LIDAR for tropical trees and shrubs mapping [J].
Zahidi, Izni ;
Yusuf, Badronnisa ;
Hamedianfar, Alireza ;
Shafri, Helmi Zulhaidi Mohd ;
Mohamed, Thamer Ahmed .
EUROPEAN JOURNAL OF REMOTE SENSING, 2015, 48 :423-446
[95]   Road Centerline Extraction from Very-High-Resolution Aerial Image and LiDAR Data Based on Road Connectivity [J].
Zhang, Zhiqiang ;
Zhang, Xinchang ;
Sun, Ying ;
Zhang, Pengcheng .
REMOTE SENSING, 2018, 10 (08)
[96]   An Object-Based Approach for Urban Land Cover Classification: Integrating LiDAR Height and Intensity Data [J].
Zhou, Weiqi .
IEEE GEOSCIENCE AND REMOTE SENSING LETTERS, 2013, 10 (04) :928-931