期刊名称:American Journal of Geographic Information System
印刷版ISSN:2163-1131
电子版ISSN:2163-114X
出版年度:2017
卷号:6
期号:5
页码:187-200
DOI:10.5923/j.ajgis.20170605.03
语种:English
出版社:Scientific & Academic Publishing Co.
摘要:Tree height estimation is fundamental in forestry inventory especially in the computation of biomass. Traditional methods for tree height estimation are not cost effective because of time, manpower and resources involved. Multiple return LiDAR capabilities offer convenient solutions for height estimations though at equally increased costs. This study seeks to provide an assessment of the accuracy of Unmanned Aerial System (UAS) stereo imagery in establishing tree distribution and canopy heights in open forests as an inexpensive alternative. To achieve this, we: generate accurate 3 dimensional surface and bare earth models from UAS data and using these products; establish tree distribution and estimate canopy heights using data filters; and validate the results using ground methods. A Mavinci Sirius fixed wing Unmanned Aerial Vehicle (UAV) fitted with a 16 Megapixel camera and flying at an average height of 371 m Above Ground Level (AGL) was used to image approximately 2 km2 capturing 380 images per flight. An image overlap of up to 85% was sufficient for stereo generation at a Ground Sample Distance (GSD) of 10 cm for a flight period of 40 minutes. The stereo imagery captured were processed into orthomosaics and photogrammetric point clouds with an average point density of 23 points per square meters using Structure from Motion (SfM) techniques. Point cloud segmentation revealed tree distribution patterns in the Ifakara area, with the Near Infrared band proving useful in filtering out trees from non-vegetated areas. From the tree height estimations and with validation information from 46 sample trees yielded a correlation coefficient, R2=75%. The study highlights a simplified and cost-effective approach for generation of accurate three dimension (3D) models from stereo UAS data. With a survey grade GPS/IMU/INS for direct-on-board geo-referencing, limited controls were required which reduces the cost of the project. With the ease of varying the size of imagery overlap and flying height, imagery with improved radiometry can be obtained hence improving the determination of tree distribution, and with multi-view image matching algorithms processing of UAS imagery is made accurate and inexpensive.
关键词:Unmanned Aerial Vehicles; Digital Elevation Model; Digital Surface Model; Canopy Height Model; Tree height