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使用机器学习进行扇形扫描中的自动缺陷检测。

Automatic flaw detection in sectoral scans using machine learning.

作者信息

Hervé-Côte Hugo, Dupont-Marillia Frédéric, Bélanger Pierre

机构信息

PULÉTS, École de technologie supérieure, 1100 Notre-Dame Ouest, Montréal QC H3C 1K3, Canada.

Nucléom, 3405 Rue Pierre-Ardouin, Québec QC G1P 0B3, Canada.

出版信息

Ultrasonics. 2024 Jul;141:107316. doi: 10.1016/j.ultras.2024.107316. Epub 2024 Apr 27.

Abstract

Phased array ultrasonic testing (PAUT) requires highly trained and qualified personnel to interpret and analyze images. It takes a solid understanding of wave propagation physics to comprehend the generated images. As such, the inspector's judgment and level of experience have a significant impact on the analysis's outcome. In addition, the procedure is prone to error and laborious. AI had shown to be effective in computer vision in a variety of classification and detection tasks. Regarding PAUT, studies have also demonstrated that machine learning may be able to identify defects with a level of accuracy that is on par or even superior to that of trained and qualified inspectors. Nonetheless, the use of computer vision in PAUT remains very limited. The primary cause of this is the challenge accessing large databases of labelled inspections. In fact, a considerable amount of training data is required for machine learning. While it is easy to access sizeable, labelled databases of MRI scans or photographs for instance, that is not the case in PAUT because inspection results are usually confidential. In this project, a large database was generated using mock-ups commonly used to train and evaluate inspectors. The different defects contained in these mock-ups were used to train a machine learning model. The data was acquired with several different probes centered at different frequencies. Each acquisition was performed using Full Matrix Capture (FMC). The post-processing of the data contained in the FMC allows to compute any sectoral scan from its focal laws. As a result, a comprehensive database composed of hundreds of thousands of sectoral scans was generated from these few FMC acquisitions. The completeness of this database facilitated robust training of a defect detection model for PAUT sectoral scans. The evaluation of the model demonstrated its ability to generalize even to defect types it had never been trained on. Furthermore, the detection performance remained consistent even in high noise conditions where the Contrast-to-Noise Ratio (CNR) was very low.

摘要

相控阵超声检测(PAUT)需要训练有素且资质合格的人员来解释和分析图像。要理解生成的图像,需要对波传播物理学有扎实的理解。因此,检查员的判断和经验水平对分析结果有重大影响。此外,该过程容易出错且费力。人工智能在各种分类和检测任务的计算机视觉中已显示出有效性。关于PAUT,研究还表明,机器学习也许能够以与训练有素且资质合格的检查员相当甚至更高的准确率识别缺陷。尽管如此,计算机视觉在PAUT中的应用仍然非常有限。其主要原因是获取带标签检测的大型数据库存在挑战。事实上,机器学习需要大量的训练数据。虽然例如很容易获取大量带标签的MRI扫描或照片数据库,但在PAUT中情况并非如此,因为检测结果通常是保密的。在这个项目中,使用通常用于训练和评估检查员的模型生成了一个大型数据库。这些模型中包含的不同缺陷用于训练机器学习模型。数据是使用几个不同频率的探头采集的。每次采集都使用全矩阵采集(FMC)进行。FMC中包含的数据的后处理允许根据其聚焦法则计算任何扇形扫描。结果,从这几次FMC采集中生成了一个由数十万扇形扫描组成的综合数据库。该数据库的完整性有助于对PAUT扇形扫描的缺陷检测模型进行强大的训练。模型评估表明其甚至能够推广到从未对其进行训练的缺陷类型。此外,即使在对比度噪声比(CNR)非常低的高噪声条件下,检测性能也保持一致。

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