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An evaluation of convergence criteria on digital image correlation
Pan Bing * #
Institute of Solid Mechanics, Beihang University, Beijing 100191
*Correspondence author
#Submitted by
Subject:
Funding: the Specialized Research Fund for the Doctoral Program of Higher Education (No.No. 20101102120015)
Opened online:20 December 2013
Accepted by: none
Citation: Pan Bing.An evaluation of convergence criteria on digital image correlation[OL]. [20 December 2013] http://en.paper.edu.cn/en_releasepaper/content/4575332
 
 
A fast, robust and accurate digital image correlation (DIC) method, which uses an efficient inverse compositional matching Gauss-Newton (IC-GN) algorithm, was recently proposed for full-field deformation measurement. As an iterative local optimization algorithm, IC-GN algorithm iteratively solves for the incremental warp assumed on the reference subset until the preset convergence criteria are satisfied. In the literature, different convergence criteria have been set for iterative optimization algorithms. However, on the one hand, stringent convergence criteria lead to increased number of iterations and lessen the computational efficiency. On the other hand, too loose convergence conditions enhance the computational efficiency but may decrease the registration accuracy. Understanding the impact of prescribed convergence criteria on DIC measurement and how to choose proper convergence criteria are therefore fundamental problems in realizing high-efficiency yet high-accuracy DIC analysis. In this paper, the convergence characteristics of IC-GN algorithm are investigated using real experimental images. The effect of various convergence criteria on the efficiency and accuracy of IC-GN algorithm are carefully examined. Recommendations are given to select proper convergence criteria for more efficient implement of IC-GN algorithm.
Keywords:Experimental Mechanics; Digital image correlation; Sub-pixel registration
 
 
 

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