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Forest Road Detection Using LiDAR Data and Hybrid Classification

Sandra Buján, Juan Guerra-Hernández, Eduardo González‐Ferreiro, David Miranda

2021Remote Sensing28 citationsDOIOpen Access PDF

Abstract

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.

Topics & Concepts

LidarRemote sensingRandom forestSegmentationDecision treePixelComputer scienceScale (ratio)CadastreEnvironmental scienceGeographyData miningCartographyArtificial intelligenceRemote Sensing and LiDAR ApplicationsWildlife-Road Interactions and ConservationAutomated Road and Building Extraction
Forest Road Detection Using LiDAR Data and Hybrid Classification | Litcius