Mobile Laser Scanning Data Collected under a Forest Canopy with GNSS/INS-Positioned Systems: Possibilities of Processability Improvements

被引:2
作者
Cenava, Juraj [1 ]
Tucek, Jan [1 ]
Chuda, Juliana [2 ]
Koren, Milan [1 ]
机构
[1] Tech Univ Zvolen, Fac Forestry, Dept Forest Resource Planning & Informat, TG Masaryka 24, Zvolen 96001, Slovakia
[2] Tech Univ Zvolen, Fac Forestry, Dept Forest Harvesting Logist & Ameliorat, TG Masaryka 24, Zvolen 96001, Slovakia
关键词
mobile laser scanning data; forest canopy; signal strength; GNSS outages; point cloud preprocessing; processability; correlation and regression analyses; occlusion; POINT CLOUDS; SIMULTANEOUS LOCALIZATION; TREE DIAMETER; REGISTRATION; TERRESTRIAL; LIDAR; STEM; EXTRACTION; NAVIGATION; ALGORITHM;
D O I
10.3390/rs16101734
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
GNSS/INS-based positioning must be revised for forest mapping, especially inside the forest. This study deals with the issue of the processability of GNSS/INS-positioned MLS data collected in the forest environment. GNSS time-based point clustering processed the misaligned MLS point clouds collected from skid trails under a forest canopy. The points of a point cloud with two misaligned copies of the forest scene were manually clustered iteratively until two partial point clouds with the single forest scene were generated using a histogram of GNSS time. The histogram's optimal bin width was the maximum bin width used to create the two correct point clouds. The influence of GNSS outage durations, signal strength statistics, and point cloud parameters on the optimal bin width were then analyzed using correlation and regression analyses. The results showed no significant influence of GNSS outage duration or GNSS signal strength from the time range of scanning the two copies of the forest scene on the optimal width. The optimal bin width was strongly related to the point distribution in time, especially by the duration of the scanned plot's occlusion from reviewing when the maximum occlusion period influenced the optimal bin width the most (R2 = 0.913). Thus, occlusion of the sub-plot scanning of tree trunks and the terrain outside it improved the processability of the MLS data. Therefore, higher stem density of a forest stand is an advantage in mapping as it increases the duration of the occlusions for a point cloud after it is spatially tiled.
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页数:26
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