Detection of the Pine Wilt Disease Using a Joint Deep Object Detection Model Based on Drone Remote Sensing Data

IF 2.4 2区 农林科学 Q1 FORESTRY
Forests Pub Date : 2024-05-16 DOI:10.3390/f15050869
Youping Wu, Honglei Yang, Yunlei Mao
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引用次数: 0

Abstract

Disease and detection is crucial for the protection of forest growth, reproduction, and biodiversity. Traditional detection methods face challenges such as limited coverage, excessive time and resource consumption, and poor accuracy, diminishing the effectiveness of forest disease prevention and control. By addressing these challenges, this study leverages drone remote sensing data combined with deep object detection models, specifically employing the YOLO-v3 algorithm based on loss function optimization, for the efficient and accurate detection of tree diseases and pests. Utilizing drone-mounted cameras, the study captures insect pest image information in pine forest areas, followed by segmentation, merging, and feature extraction processing. The computing system of airborne embedded devices is designed to ensure detection efficiency and accuracy. The improved YOLO-v3 algorithm combined with the CIoU loss function was used to detect forest pests and diseases. Compared to the traditional IoU loss function, CIoU takes into account the overlap area, the distance between the center of the predicted frame and the actual frame, and the consistency of the aspect ratio. The experimental results demonstrate the proposed model’s capability to process pest and disease images at a slightly faster speed, with an average processing time of less than 0.5 s per image, while achieving an accuracy surpassing 95%. The model’s effectiveness in identifying tree pests and diseases with high accuracy and comprehensiveness offers significant potential for developing forest inspection protection and prevention plans. However, limitations exist in the model’s performance in complex forest environments, necessitating further research to improve model universality and adaptability across diverse forest regions. Future directions include exploring advanced deep object detection models to minimize computing resource demands and enhance practical application support for forest protection and pest control.
利用基于无人机遥感数据的联合深度物体检测模型检测松树枯萎病
病害和检测对于保护森林生长、繁殖和生物多样性至关重要。传统的检测方法面临着覆盖范围有限、时间和资源消耗过多、准确性差等挑战,降低了森林病害防控的有效性。针对这些挑战,本研究利用无人机遥感数据结合深度目标检测模型,特别是采用基于损失函数优化的 YOLO-v3 算法,高效、准确地检测树木病虫害。该研究利用无人机安装的相机捕捉松林地区的虫害图像信息,然后进行分割、合并和特征提取处理。机载嵌入式设备的计算系统旨在确保检测效率和准确性。采用改进的 YOLO-v3 算法结合 CIoU 损失函数来检测森林病虫害。与传统的 IoU 损失函数相比,CIoU 考虑了重叠区域、预测帧中心与实际帧之间的距离以及长宽比的一致性。实验结果表明,所提出的模型能够以稍快的速度处理病虫害图像,每幅图像的平均处理时间小于 0.5 秒,同时准确率超过 95%。该模型在识别树木病虫害方面的高准确性和全面性为制定森林检查保护和预防计划提供了巨大的潜力。然而,该模型在复杂森林环境中的表现还存在局限性,因此有必要开展进一步研究,以提高模型在不同森林地区的通用性和适应性。未来的研究方向包括探索先进的深度目标检测模型,以最大限度地减少计算资源需求,增强对森林保护和病虫害防治的实际应用支持。
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来源期刊
Forests
Forests FORESTRY-
CiteScore
4.40
自引率
17.20%
发文量
1823
审稿时长
19.02 days
期刊介绍: Forests (ISSN 1999-4907) is an international and cross-disciplinary scholarly journal of forestry and forest ecology. It publishes research papers, short communications and review papers. There is no restriction on the length of the papers. Our aim is to encourage scientists to publish their experimental and theoretical research in as much detail as possible. Full experimental and/or methodical details must be provided for research articles.
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