This paper presents a novel method for parallelizing the seeded region growing (SRG) algorithm using Compute Unified Device Architecture (CUDA) technology, with intention to overcome the theoretical weakness of SRG algorithm of its computation time being directly proportional to the size of a segmented region. The segmentation performance of the proposed CUDA-based SRG is compared with SRG implementations on single-core CPUs, quad-core CPUs, and shader language programming, using synthetic datasets and 20 body CT scans. Based on the experimental results, the CUDA-based SRG outperforms the other three implementations, advocating that it can substantially assist the segmentation during massive CT screening tests
Segmentation and annotation of tumors in CT scans of the brain is a cumbersome time-consuming task f...
The objective of this thesis is to optimize the Seam Carving method in CUDA (Compute Unified Device ...
The Common Unified Device Architecture (CUDA) introduced in 2007 by NVIDIA is a recent programming m...
Copyright © 2014 Seongjin Park et al. This is an open access article distributed under the Creative ...
Image processing technology is now widely used in the health area, one example is to help the radiol...
Modern graphics processing units (GPUs) have evolved into high-performance processors with fully pro...
Image segmentation is an important process of image processing in the biomedical field. The method ...
The computational demands of multivariate clustering grow rapidly, and therefore processing large da...
Abstract — Nowadays microscopic analysis of tissue samples is done more and more by using digital im...
Abstract—This paper proposes a parallel region growing image segmentation algorithm for Graphics Pro...
The goal of this work is to develop a fast computed tomography (CT) reconstruction algorithm based o...
The paper presents speed up of the k-means algorithm for image segmentation. This speed up is achiev...
The purpose of this thesis was to examine ways to adapt common 2D segmentation techniques to work wi...
Abstract—In this paper a solution to identify the tumor suspect areas from the CAT scan and MR image...
The purpose of this thesis is to present the computational performances of graphical processing unit...
Segmentation and annotation of tumors in CT scans of the brain is a cumbersome time-consuming task f...
The objective of this thesis is to optimize the Seam Carving method in CUDA (Compute Unified Device ...
The Common Unified Device Architecture (CUDA) introduced in 2007 by NVIDIA is a recent programming m...
Copyright © 2014 Seongjin Park et al. This is an open access article distributed under the Creative ...
Image processing technology is now widely used in the health area, one example is to help the radiol...
Modern graphics processing units (GPUs) have evolved into high-performance processors with fully pro...
Image segmentation is an important process of image processing in the biomedical field. The method ...
The computational demands of multivariate clustering grow rapidly, and therefore processing large da...
Abstract — Nowadays microscopic analysis of tissue samples is done more and more by using digital im...
Abstract—This paper proposes a parallel region growing image segmentation algorithm for Graphics Pro...
The goal of this work is to develop a fast computed tomography (CT) reconstruction algorithm based o...
The paper presents speed up of the k-means algorithm for image segmentation. This speed up is achiev...
The purpose of this thesis was to examine ways to adapt common 2D segmentation techniques to work wi...
Abstract—In this paper a solution to identify the tumor suspect areas from the CAT scan and MR image...
The purpose of this thesis is to present the computational performances of graphical processing unit...
Segmentation and annotation of tumors in CT scans of the brain is a cumbersome time-consuming task f...
The objective of this thesis is to optimize the Seam Carving method in CUDA (Compute Unified Device ...
The Common Unified Device Architecture (CUDA) introduced in 2007 by NVIDIA is a recent programming m...