首页> 外文会议>Conference on Nondestructive Characterization and Monitoring of Advanced Materials, Aerospace, Civil Infrastructure, and Transportation >Coarse and Fine Localized CNN Classifier for Intelligent DIC Preprocessing in Large Structure Health Monitoring Sample
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Coarse and Fine Localized CNN Classifier for Intelligent DIC Preprocessing in Large Structure Health Monitoring Sample

机译:大型结构健康监测样本中智能DIC预处理的粗且精细局部CNN分类器

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Digital image correlation (DIC) is an image registration technique to measure finite three-dimensional shapes and deformations of planar and curved surfaces. This technique requires an optimal unique pattern or set of unique localized patterns as a carrier of deformation information in order to accurately measure correlations in temporal images. Recent advances in obtaining an optimal pattern in terms of saliency and uniqueness require operators' experience and/or prior metrics. In our study, we propose a preprocessing methodology to automatically classify the saliency and uniqueness of a localized pattern for DIC processing of a large structure for structural health monitoring. In order to ensure pattern saliency, we develop a localized multi-scale CNN classifier using an in-house dataset containing 20k unique coarse and fine patterns. This classifier ensures that the projected pattern is salient within a real world image. For ensuring uniqueness within an image and a set of images, we develop a novel uniqueness algorithm that ensures the structural similarity (SS1M) index of the pattern is above a similarity threshold in every part of an image as well as for all subsequent images. We integrate these algorithms as a preprocessing step to our in-house 3D-DIC program for an efficient study of 3D vibrations of large-sized structures. Initial experiments are performed on a large-sized (10m height) light tower, and it is observed that our methodology is capable of optimizing the size, saliency, and uniqueness of a pattern in order to perform efficient displacement measurements for vibrational study and health monitoring purposes.
机译:数字图像相关(DIC)是一种图像配准技术,用于测量平面和弯曲表面的有限三维形状和变形。该技术需要最佳唯一的唯一模式或一组唯一的局部模式作为变形信息的载波,以便准确地测量时间图像中的相关性。在显着性和唯一性方面获得最佳模式的最新进展需要运营商的经验和/或先前度量。在我们的研究中,我们提出了一种预处理方法,以自动对局部模式的显着性和唯一性进行分类,以便DIC处理大结构进行结构健康监测。为了确保模式显着性,我们使用包含20k独特粗略和精细图案的内部数据集开发了本地化的多尺度CNN分类器。此分类器可确保投影模式在真实世界图像中是突出的。为了确保图像内的唯一性和一组图像,我们开发一种新颖的唯一性算法,其确保图案的结构相似度(SS1M​​)索引高于图像的每个部分的相似性阈值以及所有后续图像。我们将这些算法整合为我们内部3D-DIC程序的预处理步骤,以便有效地研究大型结构的3D振动。初始实验是在大尺寸(10米高度)灯塔上进行的,并且观察到我们的方法能够优化图案的大小,显着性和唯一性,以便对振动研究和健康监测进行有效的位移测量目的。

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