首页 /研究 /An automated method for stem diameter measurement based on laser module and deep learning
LEARNING

An automated method for stem diameter measurement based on laser module and deep learning

Sheng Wang, Rao Li, Huan Li, Xiaowen Ma, Qiang Ji, Fu Xu, Hongping Fu

发表年份
2023
引用次数
4
访问权限
开放获取

摘要

BACKGROUND: Measuring stem diameter (SD) is a crucial foundation for forest resource management, but current methods require expert personnel and are time-consuming and costly. In this study, we proposed a novel device and method for automatic SD measurement using an image sensor and a laser module. Firstly, the laser module generated a spot on the tree stem that could be used as reference information for measuring SD. Secondly, an end-to-end model was performed to identify the trunk contour in the panchromatic image from the image sensor. Finally, SD was calculated from the linear relationship between the trunk contour and the spot diameter in pixels. RESULTS: We conducted SD measurements in three natural scenarios with different land cover types: transitional woodland/shrub, mixed forest, and green urban area. The SD values varied from 2.00 cm to 89.00 cm across these scenarios. Compared with the field tape measurements, the SD data measured by our method showed high consistency in different natural scenarios. The absolute mean error was 0.36 cm and the root mean square error was 0.45 cm. Our integrated device is low cost, portable, and without the assistance of a tripod. Compared to most studies, our method demonstrated better versatility and exhibited higher performance. CONCLUSION: Our method achieved the automatic, efficient and accurate measurement of SD in natural scenarios. In the future, the device will be further explored to be integrated into autonomous mobile robots for more scenarios.

关键词

Artificial intelligenceLaserMaterials scienceEngineering drawingComputer scienceOpticsEngineeringPhysics

相关论文

查看 LEARNING 分类全部论文