Trunk Detection in Complex Forest Environments Using a Lightweight YOLOv11-TrunkLight Algorithm
Siqi Zhang, Yubi Zheng, Rengui Bi, Yu Chen, Cong Chen, Xiaowen Tian, Bolin Liao

TL;DR
This paper introduces a lightweight algorithm for detecting tree trunks in forests, enabling efficient robot navigation.
Contribution
A novel lightweight trunk detection algorithm with reduced computational complexity and improved performance on edge devices.
Findings
The proposed algorithm improves detection speed by 13.5% compared to the baseline.
It reduces parameters by 34.6% and computational load by 39.7% with minimal loss in accuracy.
The algorithm is suitable for resource-constrained edge devices in forestry applications.
Abstract
The autonomous navigation of inspection robots in complex forest environments heavily relies on accurate trunk detection. However, existing detection models struggle to achieve both high accuracy and real-time performance on resource-constrained edge devices. To address this challenge, this study proposes a lightweight algorithm named YOLOv11-TrunkLight. The core innovations of the algorithm include (1) a novel StarNet_Trunk backbone network, which replaces traditional residual connections with element-wise multiplication and incorporates depthwise separable convolutions, significantly reducing computational complexity while maintaining a large receptive field; (2) the C2DA deformable attention module, which effectively handles the geometric deformation of tree trunks through dynamic relative position bias encoding; and (3) the EffiDet detection head, which improves detection speed and…
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Taxonomy
TopicsRemote Sensing and LiDAR Applications · Industrial Vision Systems and Defect Detection · Smart Agriculture and AI
