Despite the ability of current GPU processors to treat heavy parallel computation tasks, its use for solving medical image segmentation problems is still not fully exploited and remains challenging. A lot of difficulties may arise related to, for example, the different image modalities, noise and artifacts of source images, or the shape and appearance variability of the structures to segment. Motivated by practical problems of image segmentation in the medical field, we present in this paper a GPU framework based on explicit discrete deformable models, implemented over the NVidia CUDA architecture, aimed for the segmentation of volumetric images. The framework supports the segmentation in parallel of different volumetric structures as well ...
Direct volumetric visualization of medical datasets has important application in areas such as minim...
Commodity graphics hardware has become a cost-effective parallel platform to solve many general comp...
The representation of an image as a flow network has gained an increased interest in research for th...
Despite the ability of current GPU processors to treat heavy parallel computation tasks, its use for...
Modern graphics processing units (GPUs) have evolved into high-performance processors with fully pro...
The role of computers in medical image display and analysis continues to be one of the most computat...
The rapid development of computer technology has had a significant influence on advances in medical ...
Efficient segmentation of color images is important for many applications in computer vision. Non-pa...
Image segmentation techniques using fuzzy connectedness principles have shown their effectiveness in...
Medical image segmentation is widely used to identify and isolate specific areas of study within the...
Medical imaging techniques such as CT, MRI and x-ray imaging are a crucial component of modern diagn...
Abstract. Modern GPUs are well suited for performing image processing tasks. We utilize their high c...
We present a method for fast volume rendering using graphics hardware (GPU). To our knowledge, it is...
This paper presents a novel model for 3D image segmentation and reconstruction. It has been designed...
In this thesis we address di erent computationally demanding problems in the elds of simulation an...
Direct volumetric visualization of medical datasets has important application in areas such as minim...
Commodity graphics hardware has become a cost-effective parallel platform to solve many general comp...
The representation of an image as a flow network has gained an increased interest in research for th...
Despite the ability of current GPU processors to treat heavy parallel computation tasks, its use for...
Modern graphics processing units (GPUs) have evolved into high-performance processors with fully pro...
The role of computers in medical image display and analysis continues to be one of the most computat...
The rapid development of computer technology has had a significant influence on advances in medical ...
Efficient segmentation of color images is important for many applications in computer vision. Non-pa...
Image segmentation techniques using fuzzy connectedness principles have shown their effectiveness in...
Medical image segmentation is widely used to identify and isolate specific areas of study within the...
Medical imaging techniques such as CT, MRI and x-ray imaging are a crucial component of modern diagn...
Abstract. Modern GPUs are well suited for performing image processing tasks. We utilize their high c...
We present a method for fast volume rendering using graphics hardware (GPU). To our knowledge, it is...
This paper presents a novel model for 3D image segmentation and reconstruction. It has been designed...
In this thesis we address di erent computationally demanding problems in the elds of simulation an...
Direct volumetric visualization of medical datasets has important application in areas such as minim...
Commodity graphics hardware has become a cost-effective parallel platform to solve many general comp...
The representation of an image as a flow network has gained an increased interest in research for th...