Tree Trunk Detection of Eastern Red Cedar in Rangeland Environment with Deep Learning Technique

IF 2.7 2区 农林科学 Q1 FORESTRY
Chetan M. Badgujar, D. Flippo, Sujith Gunturu, Carolyn Baldwin
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引用次数: 2

Abstract

Uncontrolled spread of eastern red cedar invades the United States Great Plains prairie ecosystems and lowers biodiversity across native grasslands. The eastern red cedar (ERC) infestations cause significant challenges for ranchers and landowners, including the high costs of removing mature red cedars, reduced livestock forage feed, and reduced revenue from hunting leases. Therefore, a fleet of autonomous ground vehicles (AGV) is proposed to address the ERC infestation. However, detecting the target tree or trunk in a rangeland environment is critical in automating an ERC cutting operation. A tree trunk detection method was developed in this study for ERC trees trained in natural rangeland environments using a deep learning-based YOLOv5 model. An action camera acquired RGB images in a natural rangeland environment. A transfer learning method was adopted, and the YOLOv5 was trained to detect the varying size of the ERC tree trunk. A trained model precision, recall, and average precision were 87.8%, 84.3%, and 88.9%. The model accurately predicted the varying tree trunk sizes and differentiated between trunk and branches. This study demonstrated the potential for using pretrained deep learning models for tree trunk detection with RGB images. The developed machine vision system could be effectively integrated with a fleet of AGVs for ERC cutting. The proposed ERC tree trunk detection models would serve as a fundamental element for the AGV fleet, which would assist in effective rangeland management to maintain the ecological balance of grassland systems.
基于深度学习技术的牧场环境下东部红杉树干检测
东部红杉不受控制的蔓延入侵了美国大平原草原生态系统,降低了原生草原的生物多样性。东部红雪松(ERC)的侵扰给牧场主和土地所有者带来了重大挑战,包括移除成熟红雪松的成本高昂,牲畜饲料减少,狩猎租赁收入减少。因此,提出了一种自动地面车辆(AGV)车队来解决ERC侵扰问题。然而,在牧场环境中检测目标树或树干对于ERC切割操作的自动化至关重要。本研究利用基于深度学习的YOLOv5模型,开发了一种在自然牧场环境中训练的ERC树的树干检测方法。运动相机在自然牧场环境中获得RGB图像。采用迁移学习方法,训练YOLOv5检测ERC树干大小的变化。训练模型的准确率、召回率和平均准确率分别为87.8%、84.3%和88.9%。该模型准确地预测了树干大小的变化,并对树干和树枝进行了区分。该研究展示了使用预训练深度学习模型进行RGB图像树干检测的潜力。所开发的机器视觉系统可以有效地与agv车队集成,用于ERC切割。提出的ERC树干检测模型将作为AGV机队的基本要素,有助于有效的牧场管理,维持草原系统的生态平衡。
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来源期刊
CiteScore
5.20
自引率
12.50%
发文量
23
审稿时长
>12 weeks
期刊介绍: Croatian Journal of Forest Engineering (CROJFE) is a refereed journal distributed internationally, publishing original research articles concerning forest engineering, both theoretical and empirical. The journal covers all aspects of forest engineering research, ranging from basic to applied subjects. In addition to research articles, preliminary research notes and subject reviews are published. Journal Subjects and Fields: -Harvesting systems and technologies- Forest biomass and carbon sequestration- Forest road network planning, management and construction- System organization and forest operations- IT technologies and remote sensing- Engineering in urban forestry- Vehicle/machine design and evaluation- Modelling and sustainable management- Eco-efficient technologies in forestry- Ergonomics and work safety
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