The ever-increasing importance of accelerated information processing, communica-tion, and storing are major requirements within the big-data era revolution. With the extensive rise in data availability, handy information acquisition, and growing data rate, a critical challenge emerges in efficient handling. Even with advanced technical hardware developments and multiple Graphics Processing Units (GPUs) availability, this demand is still highly promoted to utilise these technologies effectively. Health-care systems are one of the domains yielding explosive data growth. Especially when considering their modern scanners abilities, which annually produce higher-resolution and more densely sampled medical images, with increasing requirements for ma...
Purpose: Efficient compression of images while preserving image quality has the potential to be a ma...
We propose Deep Lossless Image Coding (DLIC), a full resolution learned lossless image compression a...
In this work, we evaluate how neural networks with periodic activation functions can be leveraged to...
As scanners produce higher-resolution and more densely sampled images, this raises the challenge of ...
Data compression forms a central role in handling the bottleneck of data storage, transmission and p...
Recent achievements of sequence prediction models in numerous domains, including compression, provid...
Conduction of tele-3D-computer assisted operations as well as other telemedicine procedures often re...
3D neuro-anatomical images and other volumetric data sets are important in many scientific and biome...
Nowadays, many technologies involved for medical examinations produce multidimensional images. Such ...
Three dimensional (3D) and four dimensional (4D) medical images are increasingly being used in many ...
Medical imaging technologies are experiencing a growth in terms of usage and image resolution, name...
We introduce an efficient lossless algorithm that can be used for the compression of multidim...
Medical digital imaging technologies produce daily a huge amount of data (data obtained by magnetic ...
This thesis aims to explore the potentialities of neural networks as compression algorithms for medi...
Purpose: Efficient compression of images while preserving image quality has the potential to be a ma...
We propose Deep Lossless Image Coding (DLIC), a full resolution learned lossless image compression a...
In this work, we evaluate how neural networks with periodic activation functions can be leveraged to...
As scanners produce higher-resolution and more densely sampled images, this raises the challenge of ...
Data compression forms a central role in handling the bottleneck of data storage, transmission and p...
Recent achievements of sequence prediction models in numerous domains, including compression, provid...
Conduction of tele-3D-computer assisted operations as well as other telemedicine procedures often re...
3D neuro-anatomical images and other volumetric data sets are important in many scientific and biome...
Nowadays, many technologies involved for medical examinations produce multidimensional images. Such ...
Three dimensional (3D) and four dimensional (4D) medical images are increasingly being used in many ...
Medical imaging technologies are experiencing a growth in terms of usage and image resolution, name...
We introduce an efficient lossless algorithm that can be used for the compression of multidim...
Medical digital imaging technologies produce daily a huge amount of data (data obtained by magnetic ...
This thesis aims to explore the potentialities of neural networks as compression algorithms for medi...
Purpose: Efficient compression of images while preserving image quality has the potential to be a ma...
We propose Deep Lossless Image Coding (DLIC), a full resolution learned lossless image compression a...
In this work, we evaluate how neural networks with periodic activation functions can be leveraged to...