Deep DIC: Deep Learning-Based Digital Image Correlation for End-to-End Displacement and Strain Measurement
Ru Yang, Yang Li, Danielle Zeng, Ping Guo

TL;DR
Deep DIC introduces a deep learning framework with two neural networks for accurate, real-time displacement and strain measurement, outperforming traditional methods especially at large deformations.
Contribution
The paper presents a novel end-to-end deep learning approach for DIC, including a new synthetic dataset and separate networks for displacement and strain prediction.
Findings
Deep DIC achieves high accuracy comparable to commercial DIC software.
It provides robust strain predictions at large and localized deformations.
The method operates in real-time with millisecond computation times.
Abstract
Digital image correlation (DIC) has become an industry standard to retrieve accurate displacement and strain measurement in tensile testing and other material characterization. Though traditional DIC offers a high precision estimation of deformation for general tensile testing cases, the prediction becomes unstable at large deformation or when the speckle patterns start to tear. In addition, traditional DIC requires a long computation time and often produces a low spatial resolution output affected by filtering and speckle pattern quality. To address these challenges, we propose a new deep learning-based DIC approach--Deep DIC, in which two convolutional neural networks, DisplacementNet and StrainNet, are designed to work together for end-to-end prediction of displacements and strains. DisplacementNet predicts the displacement field and adaptively tracks a region of interest. StrainNet…
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