Aerial image segmentation of embankment dams based on multispectral remote sensing: a case study in the Belo Monte Hydroelectric Complex, Pará, Brazil.

IF 3.5 4区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
PeerJ Computer Science Pub Date : 2025-06-16 eCollection Date: 2025-01-01 DOI:10.7717/peerj-cs.2917
Carlos André de Mattos Teixeira, Thabatta Moreira Alves de Araujo, Evelin Cardoso, Marcos Antonio Costantin Filho, João Weyl Costa, Carlos Renato Lisboa Frances
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引用次数: 0

Abstract

Visual inspection is essential to ensure the stability of earth-rock dams. Periodic visual assessment of this type of structure through vegetation cover analysis is an effective monitoring method. Recently, multispectral remote sensing data and machine learning techniques have been applied to develop methodologies that enable automatic vegetation analysis and anomaly detection based on computer vision. As a first step toward this automation, this study introduces a methodology for land cover segmentation of earth-rock embankment dam structures within the Belo Monte Hydroelectric Complex, located in the state of Pará, northern Brazil. Random forest (RF) ensemble models were trained on manually annotated data captured by a multispectral sensor embedded in an uncrewed aerial vehicle (UAV). The main objectives of this study are to assess the classification performance of the algorithm in segmenting earth-rock dams and the contribution of non-visible band reflectance data to the overall model performance. A comprehensive feature engineering and ranking approach is presented to select the most descriptive features that represent the four dataset classes. Model performance was assessed using classical performance metrics derived from the confusion matrix, such as accuracy, Kappa coefficient, precision, recall, F1-score, and intersection over union (IoU). The final RF model achieved 90.9% mean IoU for binary segmentation and 91.1% mean IoU for multiclass segmentation. Post-processing techniques were applied to refine the predicted masks, enhancing the mean IoU to 93.2% and 91.9%, respectively. The flexible methodology presented in this work can be applied to different scenarios when treated as a framework for pixel-wise land cover classification, serving as a crucial step toward automating visual inspection processes. The implementation of automated monitoring solutions improves the visual inspection process and mitigates the catastrophic consequences resulting from dam failures.

基于多光谱遥感的路堤坝航空图像分割:以巴西帕尔贝罗蒙特水电站为例。
目测是保证土石坝稳定性的重要手段。通过植被覆盖分析对这类结构进行定期目视评估是一种有效的监测方法。最近,多光谱遥感数据和机器学习技术已被应用于开发基于计算机视觉的自动植被分析和异常检测方法。作为迈向自动化的第一步,本研究介绍了一种方法,用于对位于巴西北部帕尔州的贝罗蒙特水电站内的土石堤防大坝结构进行土地覆盖分割。随机森林(RF)集成模型是根据嵌入在无人机(UAV)中的多光谱传感器捕获的人工注释数据进行训练的。本研究的主要目的是评估该算法在分割土石坝中的分类性能,以及非可见光波段反射数据对整体模型性能的贡献。提出了一种综合的特征工程和排序方法,以选择代表四种数据集类的最具描述性的特征。使用从混淆矩阵中得出的经典性能指标来评估模型性能,如准确性、Kappa系数、精度、召回率、f1分数和交集/联合(IoU)。最终的RF模型实现了二元分割的平均IoU为90.9%,多类分割的平均IoU为91.1%。应用后处理技术对预测掩模进行细化,将平均IoU分别提高到93.2%和91.9%。这项工作中提出的灵活方法可以应用于不同的场景,作为逐像素土地覆盖分类的框架,作为自动化视觉检查过程的关键一步。自动化监测解决方案的实施改善了目视检查过程,减轻了大坝故障造成的灾难性后果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
PeerJ Computer Science
PeerJ Computer Science Computer Science-General Computer Science
CiteScore
6.10
自引率
5.30%
发文量
332
审稿时长
10 weeks
期刊介绍: PeerJ Computer Science is the new open access journal covering all subject areas in computer science, with the backing of a prestigious advisory board and more than 300 academic editors.
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