Abstract

Abstract. Airborne laser scanning (ALS) is an established tool for deriving various tree characteristics in forests. In some applications, an accurate pointwise estimate of the tree position is required. For dense data acquired by TLS or UAV-mounted scanners, this can be achieved by locating the stem, whose center coordinates are then used for deriving the planimetric tree position. However, in case of standard ALS data this is often not an option due to the low probability of obtaining stem hits in operational scenarios of forest mapping campaigns. This paper presents an alternative, indirect approach where the tree position is approximated as the center of a quadric surface which best represents the tree crown shape. The study targets coniferous trees due to their distinct crown shape which may be approximated by an elliptic paraboloid. It is assumed that individual tree point clusters are given and the task is to find the tree center for each cluster. We first consider the general problem of fitting an elliptic paraboloid with a known axis and an L1 residual norm error criterion, which is more robust to outliers compared to least-squares fitting. We formulate this problem as a quadratically constrained quadratic program (QCQP), and show how prior knowledge on the crown shape and center position can be incorporated. Next, a computationally simpler problem is considered where the paraboloid semiaxis lengths are constrained to be equal, and a corresponding linear program is constructed. Experiments on ALS datasets of forest plots from Bavaria, Germany and Oregon, USA reveal that a reduction in median tree position error of up to 20% can be attained compared to both least-squares fitting and other baseline techniques, resulting in an absolute error of ca. 22 cm on both datasets.

Highlights

  • Airborne laser scanning (ALS) has become an increasingly common technique for estimating parameters of both entire stands and single trees in forested areas

  • Another important application of the tree positions is for accurate co-registration of multi-modal aerial and terrestrial LiDAR point clouds/images of forest scenes based on pairwise distances between trees within the scene (Polewski et al, 2019; Lee et al, 2016)

  • 5.3.1 Comparison with baseline methods Here, we compared the positioning errors of our method at varying axis length imbalance coefficient ω values to errors obtained from competing methods: (i) the centroid of the point cluster’s 2D convex hull, (ii) the planimetric position of the highest point within the cluster, and (iii) two least-squares fitting models (Eq 5) using respectively one and two free axis lengths

Read more

Summary

Introduction

Airborne laser scanning (ALS) has become an increasingly common technique for estimating parameters of both entire stands and single trees in forested areas In the latter case, single-tree approaches attempt to first segment individual trees within the point cloud and derive parameters of interest for each found tree (Reitberger et al, 2009). A common use of the extracted tree locations is associated with evaluating the quality of a tree segmentation algorithm, where a pointwise estimate of the detected tree position is necessary for comparison with a reference location. The matching process between found tree positions via parameter optimization of an appropriate transform can ensure an alignment with a georeferenced coordinate system

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call