迈向一个自动化的机器学习和图像处理支持程序的裂缝监测

L. Parente, C. Castagnetti, Eugenia Falvo, F. Grassi, F. Mancini, P. Rossi, A. Capra
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引用次数: 0

摘要

与操作员耗时且主观的裂缝检测相比,开发自动化和远程控制程序进行精确的裂缝检测和分析是一种有利的解决方案。最近的研究表明,机器学习(ML)算法在裂缝测量方面具有足够的潜力。然而,大量数据的训练是必不可少的。当在单个站点上使用永久安装的固定摄像机时,采用机器学习解决方案可能是多余的。这项工作的目的是评估裂纹检测过程的性能,该过程基于使用ML和图像处理算法支持的易于实现的工作流程。本工作中使用的数据集由单个数字图像的时间序列组成。提出的工作流程包括采集、优化和裂纹检测三个主要模块。每个模块都是自动化的,操作员只需要训练分类器就可以进行基本的手动输入。处理模块在模块化开源程序(例如ImageJ和Ilastik)中实现。在受控条件下获得的结果导致了令人满意的检测水平(约99%的裂纹模式检测到)。在实际现场进行的实验突出了所提出方法的可变检测能力(从12%到96%)。该方法的主要局限性是由于光照条件的显著变化而产生假阳性检测。目前正在进行进一步的工作,以确定该方法的可扩展性,并验证变形检测能力。
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Towards an automated machine learning and image processing supported procedure for crack monitoring
Development of automated and remotely controlled procedures for accurate crack detection and analysis is an advantageous solution when compared to time-consuming and subjective crack examination conducted by operators. Recent studies have demonstrated that Machine Learning (ML) algorithms have sufficient potential for crack measurements. However, training of large amount of data is essential. When working on single sites with permanently installed fixed cameras adoption of ML solutions may be redundant. The purpose of this work is to assess the performance of a procedure for crack detection based on an easy to implement workflow supported by the use of ML and image processing algorithms. The datasets used in this work are composed of temporal sequence of single digital images. The workflow proposed includes three main modules covering acquisition, optimization and crack detection. Each module is automated and basic manual input by an operator is only required to train the classifier. The processing modules are implemented in modular open-source programs (e.g., ImageJ and Ilastik). Results obtained in controlled conditions led to a satisfactory level of detection (about 99% of the crack pattern detected). Experiments conducted on real-sites highlighted variable detection capabilities of the proposed approach (from 12 to 96%). The main limitation of the approach is the production of false-positive detection due to significant variation in illumination conditions. Further work is being conducted to define scalability of the approach and to verify deformation detection capabilities.
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