CVMay 6, 2025

Estimating the Diameter at Breast Height of Trees in a Forest With a Single 360 Camera

arXiv:2505.03093v23 citationsh-index: 7
Originality Incremental advance
AI Analysis

This provides a cost-effective alternative to LiDAR for forest monitoring, though it is incremental as it builds on existing photogrammetry and segmentation techniques.

The paper tackled the problem of estimating tree diameter at breast height (DBH) for forest inventories by developing a low-cost method using a single consumer-grade 360 camera, achieving median absolute relative errors of 5-9% compared to manual measurements, which is only 2-4% higher than LiDAR-based estimates.

Forest inventories rely on accurate measurements of the diameter at breast height (DBH) for ecological monitoring, resource management, and carbon accounting. While LiDAR-based techniques can achieve centimeter-level precision, they are cost-prohibitive and operationally complex. We present a low-cost alternative that only needs a consumer-grade 360 video camera. Our semi-automated pipeline comprises of (i) a dense point cloud reconstruction using Structure from Motion (SfM) photogrammetry software called Agisoft Metashape, (ii) semantic trunk segmentation by projecting Grounded Segment Anything (SAM) masks onto the 3D cloud, and (iii) a robust RANSAC-based technique to estimate cross section shape and DBH. We introduce an interactive visualization tool for inspecting segmented trees and their estimated DBH. On 61 acquisitions of 43 trees under a variety of conditions, our method attains median absolute relative errors of 5-9% with respect to "ground-truth" manual measurements. This is only 2-4% higher than LiDAR-based estimates, while employing a single 360 camera that costs orders of magnitude less, requires minimal setup, and is widely available.

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