Abstract

In digital image correlation (DIC), the noise-induced bias is significant if the noise level is high or the contrast of the image is low. However, existing methods for the estimation of the noise-induced bias are merely applicable to traditional interpolation methods such as linear and cubic interpolation, but are not applicable to generalized interpolation methods such as BSpline and OMOMS. Both traditional interpolation and generalized interpolation belong to convolution-based interpolation. Considering the widely use of generalized interpolation, this paper presents a theoretical analysis of noise-induced bias for convolution-based interpolation. A sinusoidal approximate formula for noise-induced bias is derived; this formula motivates an estimating strategy which is with speed, ease, and accuracy; furthermore, based on this formula, the mechanism of sophisticated interpolation methods generally reducing noise-induced bias is revealed. The validity of the theoretical analysis is established by both numerical simulations and actual subpixel translation experiment. Compared to existing methods, formulae provided by this paper are simpler, briefer, and more general. In addition, a more intuitionistic explanation of the cause of noise-induced bias is provided by quantitatively characterized the position-dependence of noise variability in the spatial domain.

Highlights

  • Digital image correlation (DIC) is a practical, flexible, and reliable optical metrology widely used for shape, motion, and deformation measurements [1,2,3,4,5,6,7,8]

  • The conclusions are drawn as follows: 1) Considering that existing methods for estimating noise-induced bias are not applicable to the widely used generalized interpolation, this paper presents a theoretical analysis of noise-induced bias for convolution-based interpolation

  • The validity of the theoretical derivations is established by both numerical simulations and actual subpixel translation experiment

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Summary

Introduction

Digital image correlation (DIC) is a practical, flexible, and reliable optical metrology widely used for shape, motion, and deformation measurements [1,2,3,4,5,6,7,8]. This technique retrieves fullfield displacements by matching subsets in different images. The aim of the work is to present thorough analysis of noise-induced bias for convolutionbased interpolation (both traditional interpolation and generalized interpolation belong to convolution-based interpolation).

Theoretical analysis of noise-induced bias
Deficiencies of existing methods
Systematic errors of digital image correlation
Noise-induced bias for convolution-based interpolation
Sinusoidal approximation of noise-induced bias
Systematic errors
Noise-induced bias
Sinusoidal approximation
Experimental verification
Comparison with findings in literatures
Cause of noise-induced bias
Conclusion
The dependence of sum of squared intensity gradients upon subpixel positions

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