Deep DIC: Deep Learning-Based Digital Image Correlation for End-to-End
Displacement and Strain Measurement
- URL: http://arxiv.org/abs/2110.13720v1
- Date: Tue, 26 Oct 2021 14:13:57 GMT
- Title: Deep DIC: Deep Learning-Based Digital Image Correlation for End-to-End
Displacement and Strain Measurement
- Authors: Ru Yang, Yang Li, Danielle Zeng, Ping Guo
- Abstract summary: Digital image correlation (DIC) has become an industry standard to retrieve accurate displacement and strain measurement.
Two convolutional neural networks, DisplacementNet and StrainNet, are designed to work together for end-to-end prediction of displacements and strains.
Deep DIC gives highly consistent and comparable predictions of displacement and strain with those obtained from commercial DIC software.
- Score: 4.999506391054041
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- 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 the change of a region of
interest. StrainNet predicts the strain field directly from the image input
without relying on the displacement prediction, which significantly improves
the strain prediction accuracy. A new dataset generation method is proposed to
synthesize a realistic and comprehensive dataset including artificial speckle
patterns, randomly generated displacement and strain fields, and deformed
images based on the given deformation. Proposed Deep DIC is trained purely on a
synthetic dataset, but designed to perform both on simulated and experimental
data. Its performance is systematically evaluated and compared with commercial
DIC software. Deep DIC gives highly consistent and comparable predictions of
displacement and strain with those obtained from commercial DIC software, while
it outperforms commercial software with very robust strain prediction even with
large and localized deformation and varied pattern qualities.
Related papers
- An Investigation on Machine Learning Predictive Accuracy Improvement and Uncertainty Reduction using VAE-based Data Augmentation [2.517043342442487]
Deep generative learning uses certain ML models to learn the underlying distribution of existing data and generate synthetic samples that resemble the real data.
In this study, our objective is to evaluate the effectiveness of data augmentation using variational autoencoder (VAE)-based deep generative models.
We investigated whether the data augmentation leads to improved accuracy in the predictions of a deep neural network (DNN) model trained using the augmented data.
arXiv Detail & Related papers (2024-10-24T18:15:48Z) - Physics-Informed Neural Network Based Digital Image Correlation Method [0.0]
Digital Image Correlation (DIC) is a key technique in experimental mechanics for full-field deformation measurement.
Recent deep learning-based DIC approaches, both supervised and unsupervised, use neural networks to map speckle images to deformation fields.
This paper introduces PINN-DIC, a novel DIC method based on Physics-Informed Neural Networks (PINNs)
arXiv Detail & Related papers (2024-09-02T05:53:00Z) - Physics-guided Active Sample Reweighting for Urban Flow Prediction [75.24539704456791]
Urban flow prediction is a nuanced-temporal modeling that estimates the throughput of transportation services like buses, taxis and ride-driven models.
Some recent prediction solutions bring remedies with the notion of physics-guided machine learning (PGML)
We develop a atized physics-guided network (PN), and propose a data-aware framework Physics-guided Active Sample Reweighting (P-GASR)
arXiv Detail & Related papers (2024-07-18T15:44:23Z) - Anomalous Change Point Detection Using Probabilistic Predictive Coding [13.719066883151623]
We propose a deep learning-based CPD/AD method called Probabilistic Predictive Coding (PPC)
PPC jointly learns to encode sequential data to low dimensional latent space representations and to predict the subsequent data representations as well as the corresponding prediction uncertainties.
We demonstrate the effectiveness and adaptability of our proposed method across synthetic time series experiments, image data, and real-world magnetic resonance spectroscopic imaging data.
arXiv Detail & Related papers (2024-05-24T17:17:34Z) - GIT: Detecting Uncertainty, Out-Of-Distribution and Adversarial Samples
using Gradients and Invariance Transformations [77.34726150561087]
We propose a holistic approach for the detection of generalization errors in deep neural networks.
GIT combines the usage of gradient information and invariance transformations.
Our experiments demonstrate the superior performance of GIT compared to the state-of-the-art on a variety of network architectures.
arXiv Detail & Related papers (2023-07-05T22:04:38Z) - Generating artificial digital image correlation data using
physics-guided adversarial networks [2.07180164747172]
Digital image correlation (DIC) has become a valuable tool to monitor and evaluate mechanical experiments of cracked specimen.
We present a method to directly generate large amounts of artificial displacement data of cracked specimen resembling real interpolated DIC displacements.
arXiv Detail & Related papers (2023-03-28T12:52:40Z) - Bridging Precision and Confidence: A Train-Time Loss for Calibrating
Object Detection [58.789823426981044]
We propose a novel auxiliary loss formulation that aims to align the class confidence of bounding boxes with the accurateness of predictions.
Our results reveal that our train-time loss surpasses strong calibration baselines in reducing calibration error for both in and out-domain scenarios.
arXiv Detail & Related papers (2023-03-25T08:56:21Z) - DeepRite: Deep Recurrent Inverse TreatmEnt Weighting for Adjusting
Time-varying Confounding in Modern Longitudinal Observational Data [68.29870617697532]
We propose Deep Recurrent Inverse TreatmEnt weighting (DeepRite) for time-varying confounding in longitudinal data.
DeepRite is shown to recover the ground truth from synthetic data, and estimate unbiased treatment effects from real data.
arXiv Detail & Related papers (2020-10-28T15:05:08Z) - Uncertain-DeepSSM: From Images to Probabilistic Shape Models [0.0]
DeepSSM is an end-to-end deep learning approach that extracts statistical shape representation directly from unsegmented images.
DeepSSM produces an overconfident estimate of shape that cannot be blindly assumed to be accurate.
We propose Uncertain-DeepSSM as a unified model that quantifies both, data-dependent aleatoric uncertainty by adapting the network to predict intrinsic input variance.
arXiv Detail & Related papers (2020-07-13T17:18:21Z) - Evaluating Prediction-Time Batch Normalization for Robustness under
Covariate Shift [81.74795324629712]
We call prediction-time batch normalization, which significantly improves model accuracy and calibration under covariate shift.
We show that prediction-time batch normalization provides complementary benefits to existing state-of-the-art approaches for improving robustness.
The method has mixed results when used alongside pre-training, and does not seem to perform as well under more natural types of dataset shift.
arXiv Detail & Related papers (2020-06-19T05:08:43Z) - Uncertainty Estimation Using a Single Deep Deterministic Neural Network [66.26231423824089]
We propose a method for training a deterministic deep model that can find and reject out of distribution data points at test time with a single forward pass.
We scale training in these with a novel loss function and centroid updating scheme and match the accuracy of softmax models.
arXiv Detail & Related papers (2020-03-04T12:27:36Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.