Search Results for author: Antonio Stanziola

Found 6 papers, 4 papers with code

A Learned Born Series for Highly-Scattering Media

1 code implementation9 Dec 2022 Antonio Stanziola, Simon Arridge, Ben T. Cox, Bradley E. Treeby

A new method for solving the wave equation is presented, called the learned Born series (LBS), which is derived from a convergent Born Series but its components are found through training.

Classical and learned MR to pseudo-CT mappings for accurate transcranial ultrasound simulation

no code implementations30 Jun 2022 Maria Miscouridou, José A. Pineda-Pardo, Charlotte J. Stagg, Bradley E. Treeby, Antonio Stanziola

Here, three methods for generating pseudo-CT images from magnetic resonance (MR) images were compared as an alternative to CT. A convolutional neural network (U-Net) was trained on paired MR-CT images to generate pseudo-CT images from either T1-weighted or zero-echo time (ZTE) MR images (denoted tCT and zCT, respectively).

Computed Tomography (CT)

j-Wave: An open-source differentiable wave simulator

2 code implementations30 Jun 2022 Antonio Stanziola, Simon R. Arridge, Ben T. Cox, Bradley E. Treeby

We present an open-source differentiable acoustic simulator, j-Wave, which can solve time-varying and time-harmonic acoustic problems.

BIG-bench Machine Learning

A research framework for writing differentiable PDE discretizations in JAX

1 code implementation9 Nov 2021 Antonio Stanziola, Simon R. Arridge, Ben T. Cox, Bradley E. Treeby

Differentiable simulators are an emerging concept with applications in several fields, from reinforcement learning to optimal control.

A Helmholtz equation solver using unsupervised learning: Application to transcranial ultrasound

1 code implementation29 Oct 2020 Antonio Stanziola, Simon R. Arridge, Ben T. Cox, Bradley E. Treeby

Transcranial ultrasound therapy is increasingly used for the non-invasive treatment of brain disorders.

Demonstration of Vector Flow Imaging using Convolutional Neural Networks

no code implementations11 Mar 2019 Thomas Robins, Antonio Stanziola, Kai Reimer, Peter Weinberg, Meng-Xing Tang

Synthetic Aperture Vector Flow Imaging (SA-VFI) can visualize complex cardiac and vascular blood flow patterns at high temporal resolution with a large field of view.

Optical Flow Estimation Video Recognition

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