Deep convolutional neural network for inverse problems in imaging
In this paper, we propose a novel deep convolutional neural network (CNN)-based
algorithm for solving ill-posed inverse problems. Regularized iterative algorithms have …
algorithm for solving ill-posed inverse problems. Regularized iterative algorithms have …
A review on multiplatform evaluations of semi-automatic open-source based image segmentation for cranio-maxillofacial surgery
J Wallner, M Schwaiger, K Hochegger… - Computer methods and …, 2019 - Elsevier
Background and objectives Computer-assisted technologies, such as image-based
segmentation, play an important role in the diagnosis and treatment support in cranio …
segmentation, play an important role in the diagnosis and treatment support in cranio …
Correlation of materials property and performance with internal structures evolvement revealed by laboratory X-ray tomography
L Zhang, S Wang - Materials, 2018 - mdpi.com
Although X-rays generated from a laboratory-based tube cannot be compared with
synchrotron radiation in brilliance and monochromaticity, they are still viable and accessible …
synchrotron radiation in brilliance and monochromaticity, they are still viable and accessible …
[PDF][PDF] Posed inverse problem rectification using novel deep convolutional neural network
T Vijayakumar - Journal of Innovative Image Processing (JIIP), 2020 - researchgate.net
The proposed paper addresses the inverse problems using a novel deep convolutional
neural network (CNN). Over the years, regularized iterative algorithms have been observed …
neural network (CNN). Over the years, regularized iterative algorithms have been observed …
CSR-Net: A novel complex-valued network for fast and precise 3-D microwave sparse reconstruction
Since the compressed sensing (CS) theory broke through the limitation of the traditional
Nyquist sampling theory, it has attracted extensive attention in the field of microwave …
Nyquist sampling theory, it has attracted extensive attention in the field of microwave …
Machine learning assists in increasing the time resolution of X-ray computed tomography applied to mineral precipitation in porous media
D Lee, F Weinhardt, J Hommel, J Piotrowski, H Class… - Scientific Reports, 2023 - nature.com
Many subsurface engineering technologies or natural processes cause porous medium
properties, such as porosity or permeability, to evolve in time. Studying and understanding …
properties, such as porosity or permeability, to evolve in time. Studying and understanding …
Clinical evaluation of semi-automatic open-source algorithmic software segmentation of the mandibular bone: Practical feasibility and assessment of a new course of …
J Wallner, K Hochegger, X Chen, I Mischak… - PLoS …, 2018 - journals.plos.org
Introduction Computer assisted technologies based on algorithmic software segmentation
are an increasing topic of interest in complex surgical cases. However—due to functional …
are an increasing topic of interest in complex surgical cases. However—due to functional …
Biomedical image reconstruction: From the foundations to deep neural networks
This tutorial covers biomedical image reconstruction, from the foundational concepts of
system modeling and direct reconstruction to modern sparsity and learning-based …
system modeling and direct reconstruction to modern sparsity and learning-based …
Computed tomography data collection of the complete human mandible and valid clinical ground truth models
J Wallner, I Mischak, J Egger - Scientific data, 2019 - nature.com
Image-based algorithmic software segmentation is an increasingly important topic in many
medical fields. Algorithmic segmentation is used for medical three-dimensional visualization …
medical fields. Algorithmic segmentation is used for medical three-dimensional visualization …
Pocket guide to solve inverse problems with GlobalBioIm
GlobalBioIm is an open-source MATLAB® library for solving inverse problems. The library
capitalizes on the strong commonalities between forward models to standardize the …
capitalizes on the strong commonalities between forward models to standardize the …