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A novel 2nd-order shape function based digital image correlation method for large deformation measurements

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Indexed by:期刊论文

Date of Publication:2017-03-01

Journal:OPTICS AND LASERS IN ENGINEERING

Included Journals:SCIE、EI

Volume:90

Page Number:48-58

ISSN No.:0143-8166

Key Words:Digital image correlation; Inverse compositional matching algorithm; Invertible second-order shape operator; Large deformation measurement

Abstract:Compared with the traditional forward compositional matching strategy, the inverse compositional matching strategy has almost the same accuracy, but has an obviously higher efficiency than the former in digital image correlation (DIC) algorithms. Based on the inverse compositional matching strategy and the auxiliary displacement functions, a more accurate inverse compositional Gauss-Newton (IC-GN2) algorithm with a new second-order shape operator is proposed for nonuniform and large deformation measurements. A theoretical deduction showed that the new proposed second-order shape operator is invertible and can steadily attain second-order precision. The result of the numerical simulation showed that the matching accuracy of the new IC-GN2 algorithm is the same as that of the forward compositional Gauss-Newton (FC-GN2) algorithm and is relatively better than in IC-GN2 algorithm. Finally, a rubber tension experiment with a large deformation of 27% was performed to validate the feasibility of the proposed algorithm.

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