Full Waveform Inversion-Based Ultrasound Computed Tomography Acceleration Using Two-Dimensional Convolutional Neural Networks

Author:

Kleman Christopher1,Anwar Shoaib1,Liu Zhengchun23,Gong Jiaqi4,Zhu Xishi4,Yunker Austin5,Kettimuthu Rajkumar63,He Jiaze1

Affiliation:

1. The University of Alabama Aerospace Engineering and Mechanics, , Tuscaloosa, AL 35487

2. Argonne National Laboratory Data Science and Learning, , Lemont, IL 60439;

3. University of Chicago Consortium for Advanced Science and Engineering, , Chicago, IL 60637

4. The University of Alabama Computer Science, , Tuscaloosa, AL 35487

5. Argonne National Laboratory Data Science and Learning, , Lemont, IL 60439

6. Argonne National Laboratory Data Science and Learning, , Lemont, IL 60439 ;

Abstract

AbstractUltrasound computed tomography (USCT) shows great promise in nondestructive evaluation and medical imaging due to its ability to quickly scan and collect data from a region of interest. However, existing approaches are a tradeoff between the accuracy of the prediction and the speed at which the data can be analyzed, and processing the collected data into a meaningful image requires both time and computational resources. We propose to develop convolutional neural networks (CNNs) to accelerate and enhance the inversion results to reveal underlying structures or abnormalities that may be located within the region of interest. For training, the ultrasonic signals were first processed using the full waveform inversion (FWI) technique for only a single iteration; the resulting image and the corresponding true model were used as the input and output, respectively. The proposed machine learning approach is based on implementing two-dimensional CNNs to find an approximate solution to the inverse problem of a partial differential equation-based model reconstruction. To alleviate the time-consuming and computationally intensive data generation process, a high-performance computing-based framework has been developed to generate the training data in parallel. At the inference stage, the acquired signals will be first processed by FWI for a single iteration; then the resulting image will be processed by a pre-trained CNN to instantaneously generate the final output image. The results showed that once trained, the CNNs can quickly generate the predicted wave speed distributions with significantly enhanced speed and accuracy.

Funder

National Science Foundation

Publisher

ASME International

Subject

Mechanics of Materials,Safety, Risk, Reliability and Quality,Civil and Structural Engineering

Reference54 articles.

1. Resolution Analysis in Full Waveform Inversion;Fichtner;Geophys. J. Int.,2011

2. Anisotropic 3d Full-Waveform Inversion;Warner;Geophysics,2013

3. Apex-shifted Radon Transform for Baseline-subtraction-free (BSF) Damage Scattered Wave Extraction;Loshelder;Struct. Health Monit.,2023

4. Wind turbine blade health monitoring with piezoceramic-based wireless sensor network;Song;Int. J. Smart Nano Mater,2013

5. Use of Convolutional Neural Networks With Encoder–Decoder Structure for Predicting the Inverse Operator in Hydraulic Tomography;Jardani;J. Hydrol.,2022

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