TL;DR
SimTreeLS is an open source tool that generates realistic simulated LiDAR point clouds of trees, aiding data augmentation for machine learning in forestry and agriculture.
Contribution
We introduce SimTreeLS, a novel tool for generating customizable, labeled simulated LiDAR scans of trees, reducing the need for costly manual data collection.
Findings
Simulated scans closely match real LiDAR data in key characteristics.
SimTreeLS can generate diverse tree shapes, layouts, and trajectories.
The tool is open source and built on publicly available libraries.
Abstract
There are numerous emerging applications for digitizing trees using terrestrial and aerial laser scanning, particularly in the fields of agriculture and forestry. Interpretation of LiDAR point clouds is increasingly relying on data-driven methods (such as supervised machine learning) that rely on large quantities of hand-labelled data. As this data is potentially expensive to capture, and difficult to clearly visualise and label manually, a means of supplementing real LiDAR scans with simulated data is becoming a necessary step in realising the potential of these methods. We present an open source tool, SimTreeLS (Simulated Tree Laser Scans), for generating point clouds which simulate scanning with user-defined sensor, trajectory, tree shape and layout parameters. Upon simulation, material classification is kept in a pointwise fashion so leaf and woody matter are perfectly known, and…
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