VEPL数据集:用于无人机航拍正像图语义分割的电力线走廊植被侵占数据集

IF 2.7 3区 物理与天体物理 Q2 PHYSICS, ATOMIC, MOLECULAR & CHEMICAL
Mateo Cano-Solis, J. Ballesteros, John W. Branch-Bedoya
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引用次数: 3

摘要

对于现代能源依赖型社会来说,电力线走廊的植被侵占具有多重问题。由于电线和植被之间的接触而导致的故障可能导致停电和数百万美元的损失。为了解决这个问题,无人机已经成为一个很有前途的解决方案,因为它们能够通过自主飞行或远程驾驶快速、经济地监控长走廊。然而,在搜索植被侵占的存在时,需要分析无人机获取的每张图像的广泛和手动任务导致许多作者提出使用深度学习来自动化检测过程。尽管结合使用无人机图像和深度学习具有优势,但目前缺乏有助于针对这一特定问题训练深度学习模型的数据集。本文提出了一种用于电力线廊道植被侵蚀语义分割的数据集。利用商用无人机对农村公路区域进行了RGB正形图的获取。该数据集由一对对镶嵌的RGB图像组成,这些图像来自正交和相应的多色掩模,代表三种不同的类别:植被、电力线和背景。提供了图像采集过程的详细描述,以及标记任务和数据增强技术,以及生成数据集的其他相关细节。通过开发和改进使用无人机和深度学习的植被入侵监测策略,研究人员将受益于使用拟议的数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
VEPL Dataset: A Vegetation Encroachment in Power Line Corridors Dataset for Semantic Segmentation of Drone Aerial Orthomosaics
Vegetation encroachment in power line corridors has multiple problems for modern energy-dependent societies. Failures due to the contact between power lines and vegetation can result in power outages and millions of dollars in losses. To address this problem, UAVs have emerged as a promising solution due to their ability to quickly and affordably monitor long corridors through autonomous flights or being remotely piloted. However, the extensive and manual task that requires analyzing every image acquired by the UAVs when searching for the existence of vegetation encroachment has led many authors to propose the use of Deep Learning to automate the detection process. Despite the advantages of using a combination of UAV imagery and Deep Learning, there is currently a lack of datasets that help to train Deep Learning models for this specific problem. This paper presents a dataset for the semantic segmentation of vegetation encroachment in power line corridors. RGB orthomosaics were obtained for a rural road area using a commercial UAV. The dataset is composed of pairs of tessellated RGB images, coming from the orthomosaic and corresponding multi-color masks representing three different classes: vegetation, power lines, and the background. A detailed description of the image acquisition process is provided, as well as the labeling task and the data augmentation techniques, among other relevant details to produce the dataset. Researchers would benefit from using the proposed dataset by developing and improving strategies for vegetation encroachment monitoring using UAVs and Deep Learning.
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来源期刊
Atomic Data and Nuclear Data Tables
Atomic Data and Nuclear Data Tables 物理-物理:核物理
CiteScore
4.50
自引率
11.10%
发文量
27
审稿时长
47 days
期刊介绍: Atomic Data and Nuclear Data Tables presents compilations of experimental and theoretical information in atomic physics, nuclear physics, and closely related fields. The journal is devoted to the publication of tables and graphs of general usefulness to researchers in both basic and applied areas. Extensive ... click here for full Aims & Scope Atomic Data and Nuclear Data Tables presents compilations of experimental and theoretical information in atomic physics, nuclear physics, and closely related fields. The journal is devoted to the publication of tables and graphs of general usefulness to researchers in both basic and applied areas. Extensive and comprehensive compilations of experimental and theoretical results are featured.
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