Algorithm Analysis and Optimization of a Digital Image Correlation Method Using a Non-Probability Interval Multidimensional Parallelepiped Model

Xuedong Zhu, Jianhua Liu, Xiaohui Ao*, Huanxiong Xia, Sihan Huang, Lijian Zhu, Xiaoqiang Li, Changlin Du

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

Abstract

Digital image correlation (DIC), a widely used non-contact measurement technique, often requires empirical tuning of several algorithmic parameters to strike a balance between computational accuracy and efficiency. This paper introduces a novel uncertainty analysis approach aimed at optimizing the parameter intervals of a DIC algorithm. Specifically, the method leverages the inverse compositional Gauss–Newton algorithm combined with a prediction-correction scheme (IC-GN-PC), considering three critical parameters as interval variables. Uncertainty analysis is conducted using a non-probabilistic interval-based multidimensional parallelepiped model, where accuracy and efficiency serve as the reliability indexes. To achieve both high computational accuracy and efficiency, these two reliability indexes are simultaneously improved by optimizing the chosen parameter intervals. The optimized algorithm parameters are subsequently tested and validated through two case studies. The proposed method can be generalized to enhance multiple aspects of an algorithm’s performance by optimizing the relevant parameter intervals.

Original languageEnglish
Article number6460
JournalSensors
Volume24
Issue number19
DOIs
Publication statusPublished - Oct 2024

Keywords

  • digital image correlation
  • optimization
  • parameter interval
  • reliability index
  • uncertainty analysis

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