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首页> 外文期刊>Optics and Lasers in Engineering >Digital image correlation with gray gradient constraints: Application to spatially variant speckle images
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Digital image correlation with gray gradient constraints: Application to spatially variant speckle images

机译:具有灰度梯度约束的数字图像相关:应用于空间变异斑点图像

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摘要

As a carrier of local deformation information, speckle pattern inside a subset is usually crucial for surface displacement acquisition based upon a digital image correlation (DIC) method, since both accuracy and precision of DIC method are closely related to the amount of speckle information in a subset. Although some comprehensive theoretical frameworks have been developed to estimate the quality of local speckle patterns, it is still a great challenge how to effectively integrate the subset speckle information into the well-developed correlation criteria used for DIC. By means of a well-designed square window function, we here propose the concept of continuous subset in order to modulate subset size in a continuously derivable manner. Afterwards, we further develop a new constrained zero-normalized sum-of-squared differences (CZNSSD) criterion and construct the corresponding iterative algorithm, based on which the subset size involved can be automatically determined according to the necessary amount of speckle information. Numerical results of synthetic speckle images indicate that the set of algorithm can enhance the accuracy and precision of displacement measurement, especially for spatially variant speckle images. (c) 2015 Elsevier Ltd. All rights reserved.
机译:作为局部变形信息的载体,子集内的斑点图案通常对于基于数字图像相关(DIC)方法的表面位移获取至关重要,因为DIC方法的准确性和精度都与图像中斑点信息的数量密切相关。子集。尽管已经开发了一些综合的理论框架来估计局部散斑图案的质量,但是如何有效地将子集散斑信息有效地集成到用于DIC的发达相关标准中仍然是一个巨大的挑战。通过精心设计的方窗函数,我们在这里提出连续子集的概念,以便以连续可推导的方式调制子集大小。之后,我们进一步开发了一种新的约束零归一化平方和差(CZNSSD)准则,并构造了相应的迭代算法,在此基础上,可以根据必要的散斑信息量自动确定所涉及的子集大小。合成散斑图像的数值结果表明,该算法集可以提高位移测量的准确性和精度,特别是对于空间变异的散斑图像而言。 (c)2015 Elsevier Ltd.保留所有权利。

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