Forest roads damage detection based on deep learning algorithms

IF 1.5 3区 农林科学 Q2 FORESTRY Scandinavian Journal of Forest Research Pub Date : 2022-11-17 DOI:10.1080/02827581.2022.2147213
M. Heidari, A. Najafi, J. Borges
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引用次数: 1

Abstract

ABSTRACT Currently, forest road monitoring reached a critical stage and need requires low-cost or cost-effective monitoring. Today, smartphones have been used on public roads to identify road deterioration due to benefits such as usability, cost, ease of access, and expected accuracy. The use of smartphones in forest road development by the proposed system is a distributed information system that converts data from enterprise mode to field mode by harvesting and assessing forest road conditions and image processing technologies. The technology proposed in this research allows different information YOLOv4-v5 with improvements to this version including mosaic data augmentation and automatic learning of enclosing frames. In this research, we applied a new hybrid YOLOv4-v5 to the dataset’s general applicability. We assessed the forest road dataset to run an experiment, smartphone images by various aspects of the smartphone images (SI) dataset which is specialized for detecting forest road deterioration. To enhance YOLO’s ability to detect damaged scenes by proposing a new technique that takes information into frames. We expanded the scope of the model by applying it to a new orientation estimation task. The main disadvantage is the provision of qualitative model information on forest road activity and the indication of potential deterioration.
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基于深度学习算法的森林道路损伤检测
摘要当前,森林道路监测已进入关键阶段,需要低成本或高成本的监测。如今,由于可用性、成本、易用性和预期准确性等优点,智能手机已被用于公共道路,以识别道路恶化。拟议系统在森林道路开发中使用智能手机是一个分布式信息系统,通过采集和评估森林道路状况以及图像处理技术,将数据从企业模式转换为田间模式。本研究中提出的技术允许不同的信息YOLOv4-v5,并对该版本进行了改进,包括马赛克数据增强和包围帧的自动学习。在本研究中,我们将一种新的混合YOLOv4-v5应用于数据集的通用性。我们评估了森林道路数据集以进行实验,智能手机图像通过智能手机图像(SI)数据集的各个方面进行,该数据集专门用于检测森林道路退化。通过提出一种将信息带入帧中的新技术,增强YOLO检测受损场景的能力。我们将该模型应用于一项新的方位估计任务,从而扩大了模型的范围。主要缺点是提供了关于森林道路活动的定性模型信息,并指出了潜在的恶化。
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来源期刊
CiteScore
3.00
自引率
5.60%
发文量
26
审稿时长
3.3 months
期刊介绍: The Scandinavian Journal of Forest Research is a leading international research journal with a focus on forests and forestry in boreal and temperate regions worldwide.
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