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Optimized and Tailorable Speckle Pattern Generation Approach for Digital Image Correlation Applications in SHM

机译:SHM中数字图像相关应用的优化和可定制散斑图生成方法

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A novel speckle pattern development technique is introduced to create a parametric space to allow for implementation of the Digital Image Correlation (DIC) method in Structural Health Monitoring (SHM) applications. DIC is a non-contact, vision-based deformation measurement method that has been widely used in mechanical testing and material characterization, as well as in structural testing applications. Being scale invariable, this technique has been used to measure full field 3D deformation as well as to identify damage occurring on a large range of scales from transportation bridges all the way down to material microstructure measurements. DIC tracks subsections of images taken during the deformation process to provide full field displacements and maps. To accomplish this goal, surface patterns are used when employing stereoscopic vision and the results with respect to deformation resolution vary due to both hardware and software reasons. In general practice, spraying and airbrushing are used for speckling in a scale from millimeters to meters, while stencils and specialized markers are applied to track deformation on bigger structures, the quality of which is dependent on the user's experience. In this paper an optimized pattern development technique is proposed to numerically and on-demand generate speckle sizing and distribution-controlled speckle patterns to reduce the uncertainty and increase the usefulness of DIC measurements at variant scales. The quality of the pattern is achieved by extracting features from a bio-templating inspired pattern and merging them with size control parameters for optimized pattern generation for given FOV sizes. Features that improve the quality of the speckle pattern are subsequently extracted via a deconvolution within the frequency spectrum. Gradient information controlling properties of the high-quality pattern are then synthesized and convolved with size and distribution controlling properties of a numerically generated pattern to produce optimized patterns which can then be transferred onto the specimens/structures. An error analysis study shows that the optimized pattern provides better results as compared to traditional speckling methods and that of the original bio-templated image. While the systematic bias in the error remained comparable to that of standard speckling methods, the random bias error reflects an 80% reduction across the entire field of view investigated. The viability of producing multiscale deformation information using this novel approach is assessed by a number of numerical tests.
机译:引入了一种新颖的散斑图样开发技术来创建参数空间,以允许在结构健康监控(SHM)应用程序中实现数字图像关联(DIC)方法。 DIC是一种基于视觉的非接触式变形测量方法,已广泛用于机械测试和材料表征以及结构测试应用中。由于比例尺不变,因此该技术已用于测量全场3D变形以及识别从运输桥一直到材料微结构测量的大范围比例尺上发生的损坏。 DIC跟踪变形过程中拍摄的图像的各个部分,以提供完整的场位移和地图。为了实现此目标,在采用立体视觉时会使用表面图案,并且由于硬件和软件原因,有关变形分辨率的结果也会有所不同。在一般实践中,喷涂和喷枪用于从毫米到米的刻度上散斑,而模版和专用标记则用于跟踪较大结构上的变形,其质量取决于用户的经验。在本文中,提出了一种优化的图案开发技术,以数字方式和按需生成散斑尺寸和分布控制的散斑图案,以减少不确定性并提高DIC测量在不同尺度下的实用性。通过从生物模板启发的图案中提取特征并将其与尺寸控制参数合并以针对给定的FOV尺寸优化图案生成,可以实现图案的质量。随后,通过频谱内的反卷积提取改善斑点图案质量的特征。然后合成高质量图案的渐变信息控制属性,并将其与数字生成的图案的大小和分布控制属性进行卷积,以生成优化的图案,然后将其转移到样本/结构上。误差分析研究表明,与传统的散斑方法和原始生物模板化图像相比,优化后的图案可提供更好的结果。尽管误差的系统偏差仍可与标准散斑方法相媲美,但随机偏差误差反映了所研究整个视野中的80%的减小。通过许多数值测试,评估了使用这种新颖方法产生多尺度变形信息的可行性。

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