首页> 外文会议>Conference on Multimodal Sensing: Technologies and Applications;Society of Photo-Optical Instrumentation Engineers;European Optical Society >Robust principal component analysis of ultrasonic sectorial scans for defect detection in weld inspection
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Robust principal component analysis of ultrasonic sectorial scans for defect detection in weld inspection

机译:超声扇形扫描的稳健主成分分析,可用于焊缝检测中的缺陷检测

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A single weld defect in a safety-critical engineering structure has the potential to incur high monetary costs,damage to the environment or loss of human life. This makes comprehensive non-destructive internal and externalinspection of these welds essential. For non-destructive internal inspection the ultrasonic phased array supportsa number of methods for producing a cross sectional image at a fixed location. Full coverage of the weld requiresa sequence of images to be taken along the full length, each image at a unique incremental step. If the weldhas a geometrically regular structure, such as that corresponding to a long linear section or the circumferenceof a pipe, automation becomes possible and data is now provided for post processing and auditing. Particularlyin a production process this may provide many thousands of images a day, all of which must be manuallyexamined by a qualified inspector. Presented in this paper is an approach for rapid identification of anomaliesin sequences of ultrasonic sector images taken at equally spaced index points. The proposed method is basedon robust principal component analysis (PCA). An assumption is that most sectors are anomaly free and havea statistically similar geometrical structure. Unsupervised multivariate statistical analysis is now performed toyield an initial low dimensional principal subspace representing the variation of the common weld background.Using the Mahalanobis distance outliers, observations with extreme variations and likely to correspond to sectorscans containing anomalies, are removed from the reference set. This ensures a robust PCA-based reference modelfor weld background, against which a sectorial scan is identified as defect free or not. Using a comprehensiveset of sector scan data acquired from test blocks, containing different types and sizes of weld defects at differentlocations and orientations, the paper concludes that PCA has potential for anomaly detection in this context.Although trimming improves the accuracy of the system eigenvectors, it is shown that greater accuracy of thelow rank subspace is possible through principal component pursuit (PCP). This is evident by an almost 100%anomaly detection rate with a false alarm rate of well below 10%.
机译:安全关键型工程结构中的单个焊缝缺陷可能会导致高昂的金钱成本, 对环境的破坏或生命的丧失。这使得内部和外部全面无损 这些焊缝的检查必不可少。对于无损内部检查,超声相控阵支架 在固定位置产生横截面图像的多种方法。全覆盖焊缝要求 沿全长拍摄的一系列图像,每个图像以唯一的增量步骤进行拍摄。如果焊缝 具有几何规则的结构,例如对应于较长的线性截面或圆周的结构 管道的自动化使自动化成为可能,并且现在提供数据以进行后处理和审计。特别 在生产过程中,每天可能会提供成千上万张图像,所有这些图像都必须手动进行 由合格的检查员检查。本文提出的是一种快速识别异常的方法 在相等间隔的索引点处拍摄的超声扇形图像序列中。所提出的方法是基于 稳健的主成分分析(PCA)。一个假设是,大多数部门是异常自由的,并且具有 统计上相似的几何结构。现在进行无监督的多元统计分析,以 产生一个初始的低维主子空间,表示普通焊接背景的变化。 使用Mahalanobis距离离群值,观测值具有极大的变化并且可能对应于扇区 包含异常的扫描将从参考集中删除。这确保了基于PCA的强大参考模型 对于焊接背景,扇区扫描被识别为无缺陷或无缺陷。使用全面 从测试块获取的一组扇区扫描数据,其中包含不同类型和大小的不同焊缝缺陷 位置和方向,本文得出结论,在这种情况下PCA具有检测异常的潜力。 尽管微调提高了系统特征向量的精度,但事实表明,该方法的精度更高。 低阶子空间可以通过主成分追踪(PCP)实现。这几乎可以证明100% 异常检测率,误报率远低于10%。

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