基于深度全卷积数据描述的一类民用损伤检测器

Takato Yasuno, M. Okano, Junichiro Fujii
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引用次数: 5

摘要

基础设施管理人员必须保持高标准,以确保在基础设施的生命周期内用户满意。监视摄像机和目视检查使在自动检测异常特征和评估恶化情况方面取得了进展。然而,收集损坏数据通常非常耗时,并且需要反复检查。一类损伤检测方法的优点是可以使用正常图像来优化模型参数。此外,热图的视觉评价使我们能够了解局部异常特征。重点介绍了损伤视觉在鲁棒性和局部损伤可解释性方面的应用。首先,我们提出了一个民用应用程序,用于自动化一类损伤检测,再现了一个完全卷积数据描述(FCDD)作为基线模型。我们已经获得了准确和可解释的结果,证明了土木工程中混凝土损伤和钢腐蚀的实验研究。此外,为了开发更强大的应用程序,我们使用使用各种设备收集的自然灾害数据集,将我们的方法应用于另一个包含复杂和嘈杂背景的户外域。此外,我们提出了一个有价值的解决方案,即聚焦于其他强大的骨干的更深层次的fcdd,以提高损伤检测的性能,并实现对灾害数据集的消融研究。关键结果表明,在飓风、台风、地震和四种自然灾害造成的自然灾害损失数据集上,更深层次的fdd优于基线fdd。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
One-class Damage Detector Using Deeper Fully Convolutional Data Descriptions for Civil Application
Infrastructure managers must maintain high standards to ensure user satisfaction during the lifecycle of infrastructures. Surveillance cameras and visual inspections have enabled progress in automating the detection of anomalous features and assessing the occurrence of deterioration. However, collecting damage data is typically time consuming and requires repeated inspections. The one-class damage detection approach has an advantage in that normal images can be used to optimize model parameters. Additionally, visual evaluation of heatmaps enables us to understand localized anomalous features. The authors highlight damage vision applications utilized in the robust property and localized damage explainability. First, we propose a civil-purpose application for automating one-class damage detection reproducing a Fully Convolutional Data Description (FCDD) as a baseline model. We have obtained accurate and explainable results demonstrating experimental studies on concrete damage and steel corrosion in civil engineering. Additionally, to develop a more robust application, we applied our method to another outdoor domain that contains complex and noisy backgrounds using natural disaster datasets collected using various devices. Furthermore, we propose a valuable solution of deeper FCDDs focusing on other powerful backbones to improve the performance of damage detection and implement ablation studies on disaster datasets. The key results indicate that the deeper FCDDs outperformed the baseline FCDD on datasets representing natural disaster damage caused by hurricanes, typhoons, earthquakes, and fourevent disasters.
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