ROCVJan 21, 2025

Towards autonomous photogrammetric forest inventory using a lightweight under-canopy robotic drone

arXiv:2501.12073v37 citationsh-index: 37Has CodeInt J Remote Sens
Originality Incremental advance
AI Analysis

This work addresses the problem of manual drone piloting in forestry by enabling autonomous under-canopy mapping, though it is incremental as it builds on existing open-source methods.

The researchers tackled the challenge of autonomous drone flight and data collection inside dense forests, where GPS is unreliable, by developing a lightweight robotic drone prototype that successfully performed autonomous flights and achieved a root mean square error of 3.33-3.97 cm (10.69-12.98%) for tree diameter estimation.

Drones are increasingly used in forestry to capture high-resolution remote sensing data, supporting enhanced monitoring, assessment, and decision-making processes. While operations above the forest canopy are already highly automated, flying inside forests remains challenging, primarily relying on manual piloting. In dense forests, relying on the Global Navigation Satellite System (GNSS) for localization is not feasible. In addition, the drone must autonomously adjust its flight path to avoid collisions. Recently, advancements in robotics have enabled autonomous drone flights in GNSS-denied obstacle-rich areas. In this article, a step towards autonomous forest data collection is taken by building a prototype of a robotic under-canopy drone utilizing state-of-the-art open source methods and validating its performance for data collection inside forests. Specifically, the study focused on camera-based autonomous flight under the forest canopy and photogrammetric post-processing of the data collected with the low-cost onboard stereo camera. The autonomous flight capability of the prototype was evaluated through multiple test flights in boreal forests. The tree parameter estimation capability was studied by performing diameter at breast height (DBH) estimation. The prototype successfully carried out flights in selected challenging forest environments, and the experiments showed promising performance in forest 3D modeling with a miniaturized stereoscopic photogrammetric system. The DBH estimation achieved a root mean square error (RMSE) of 3.33 - 3.97 cm (10.69 - 12.98 %) across all trees. For trees with a DBH less than 30 cm, the RMSE was 1.16 - 2.56 cm (5.74 - 12.47 %). The results provide valuable insights into autonomous under-canopy forest mapping and highlight the critical next steps for advancing lightweight robotic drone systems for mapping complex forest environments.

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