Low-Cost Stereo Vision for Robust 3D Positioning of Thin Radiata Pine Branches in Autonomous Drone Pruning
Yida Lin, Bing Xue, Mengjie Zhang, Sam Schofield, Richard Green

TL;DR
This paper explores using a low-cost stereo camera on a drone for accurate 3D positioning of thin pine branches to enable autonomous pruning, replacing expensive sensors like LiDAR.
Contribution
It introduces a novel pipeline combining stereo segmentation with a centroid-based triangulation and outlier rejection for robust branch distance estimation in forestry scenes.
Findings
Learning-based stereo methods outperform traditional approaches in depth coherence.
The pipeline accurately detects and estimates distances for branches as thin as 10 mm.
The approach reduces sensor costs and complexity for autonomous forestry applications.
Abstract
Manual pruning of radiata pine, a species of major economic importance to New Zealand forestry, is hazardous, labour-intensive, and increasingly constrained by workforce shortages. Existing autonomous pruning platforms typically rely on expensive sensors such as LiDAR and are limited to thick branches, which restricts their wider adoption. This paper investigates whether a single low-cost stereo camera mounted on a drone can provide sufficiently accurate branch detection and three-dimensional positioning to support autonomous pruning of branches as thin as 10 mm, thereby removing the need for auxiliary depth sensors. The proposed pipeline comprises two stages: branch segmentation and depth estimation. For segmentation, Mask R-CNN variants and the YOLOv8 and YOLOv9 families are compared on a custom dataset of 71 stereo image pairs captured with a ZED Mini camera; YOLOv8 and YOLOv9 are…
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