Litcius/Paper detail

Automatic ROI recognition and parameters selection for digital image correlation in measuring structures with complex shapes

Xiangnan Cheng, Tongzhen Xing, Shichao Zhou, Chen Sun, Shaopeng Ma, Jubing Chen

2023Measurement Science and Technology13 citationsDOI

Abstract

Abstract For the digital image correlation (DIC) method, the measurement of specimens with complex shapes may encounter difficulties due to the time-consuming recognition of region of interest (ROI), and the indeterminate parameter selection caused by the non-uniform deformation. This paper proposes an automatic DIC for the measurement of structures with complex shapes. An automatic ROI segmentation is developed by combining a convolutional neural network and image morphology, so the boundary of the specimen can be acquired accurately and efficiently. In dealing with the non-uniform deformation, a strain-related automatic selection of DIC parameters is developed, in which the sampling intervals and the subset sizes at different areas can be automatically determined. Both results of the simulated experiment and real experiment show that, by combing the two approaches with segmentation-aided DIC, the proposed automatic DIC can characterize the complex deformation including the boundary of the structures effectively.

Topics & Concepts

Digital image correlationArtificial intelligenceComputer scienceSegmentationBoundary (topology)Computer visionPattern recognition (psychology)Deformation (meteorology)Selection (genetic algorithm)Convolutional neural networkCombingRegion of interestImage (mathematics)Image segmentationMathematicsMaterials scienceComposite materialMathematical analysisOptical measurement and interference techniquesImage Processing Techniques and ApplicationsImage and Object Detection Techniques