GMDIC:一种基于全局匹配的大变形位移场数字图像相关测量方法。

IF 1.4 3区 物理与天体物理 Q3 OPTICS
Linlin Wang, Jing Shao, ZhuJun Wang, Qian Gao, ChuanYun Wang, Zhuo Yan, ZhongYi Li, Tong Zhang
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引用次数: 0

摘要

数字图像相关法是一种非接触式光学测量方法,具有全场测量、操作简单、测量精度高等优点。传统的DIC方法可以准确地测量位移场和应变场,但仍然存在许多局限性。(i)在大位移变形测量中,由于子集大小、步长等参数设置不合理,导致位移场和应变场的计算精度有待提高。(ii)在重构光滑位移场或应变场时,难以避免过匹配或欠匹配。(iii)在处理大规模图像数据时,计算复杂度会很高,导致处理速度较慢。近年来,基于深度学习的DIC在解决上述问题方面表现出了良好的能力。我们提出了一种新的,据我们所知,基于深度学习的DIC方法,该方法被设计用于测量复杂大变形中的散斑图像的位移场。该网络将多头注意力swwin - transformer和高效通道注意力模块ECA相结合,并在特征中加入位置信息,增强特征表示能力。为了训练模型,我们构建了一个符合实际情况的位移场数据集,该数据集包含各种类型的散斑图像和复杂的变形。实测结果表明,该模型在实际实验中与传统的DIC方法具有一致的位移预测精度。此外,我们的模型在大位移情况下优于传统的DIC方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GMDIC: a digital image correlation measurement method based on global matching for large deformation displacement fields.

The digital image correlation method is a non-contact optical measurement method, which has the advantages of full-field measurement, simple operation, and high measurement accuracy. The traditional DIC method can accurately measure displacement and strain fields, but there are still many limitations. (i) In the measurement of large displacement deformations, the calculation accuracy of the displacement field and strain field needs to be improved due to the unreasonable setting of parameters such as subset size and step size. (ii) It is difficult to avoid under-matching or over-matching when reconstructing smooth displacement or strain fields. (iii) When processing large-scale image data, the computational complexity will be very high, resulting in slow processing speeds. In recent years, deep-learning-based DIC has shown promising capabilities in addressing the aforementioned issues. We propose a new, to the best of our knowledge, DIC method based on deep learning, which is designed for measuring displacement fields of speckle images in complex large deformations. The network combines the multi-head attention Swin-Transformer and the high-efficient channel attention module ECA and adds positional information to the features to enhance feature representation capabilities. To train the model, we constructed a displacement field dataset that conformed to the real situation and contained various types of speckle images and complex deformations. The measurement results indicate that our model achieves consistent displacement prediction accuracy with traditional DIC methods in practical experiments. Moreover, our model outperforms traditional DIC methods in cases of large displacement scenarios.

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来源期刊
CiteScore
3.40
自引率
10.50%
发文量
417
审稿时长
3 months
期刊介绍: The Journal of the Optical Society of America A (JOSA A) is devoted to developments in any field of classical optics, image science, and vision. JOSA A includes original peer-reviewed papers on such topics as: * Atmospheric optics * Clinical vision * Coherence and Statistical Optics * Color * Diffraction and gratings * Image processing * Machine vision * Physiological optics * Polarization * Scattering * Signal processing * Thin films * Visual optics Also: j opt soc am a.
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