Due to processing constraints, automatic image-based registration of medical images has been largely used as a pre-operative tool. We propose a novel method named sort and count for efficient parallelization of mutual information (MI) computation designed for massively multi-processing architectures. Combined with a parallel transformation implementation and an improved optimization algorithm, our method achieves real-time (less than 1. s) rigid registration of 3D medical images using a commodity graphics processing unit (GPU). This represents a more than 50-fold improvement over a standard implementation on a CPU. Real-time registration opens new possibilities for development of improved and interactive intraoperative tools that can be use...
Intensity based two-dimensional to three-dimensional (2D- 3D) registration algorithms usually rely o...
The role of computers in medical image display and analysis continues to be one of the most computat...
Abstract–We have developed code to test the potential of GPUs for speeding up typical 3D Medical Ima...
Medical image registration is time-consuming but can be sped up employing parallel processing on the...
Abstract — For the past decade, improving the performance and accuracy of medical image registration...
Purpose: Image registration is an important aspect of medical image analysis and a key component in ...
In this article, we look at early, recent, and state-of-the-art methods for registration of medical ...
Abstract. For many clinical applications, non-rigid registration of med-ical images demands cost-eff...
Medical image registration tasks of large volume datasets, especially in the non-rigid case, often p...
We present a method for fast phase based registration of volume data for medical applications. As th...
In the medical field, volume rendering provides good quality 3D visualizations but is still not enou...
The registration of multi-modal medical image data is important in the fields of image guided surger...
High Performance Deformable Image Registration Algorithms for Manycore Processors develops highly da...
An efficient implementation are necessary, as most medical imaging methods are computational expens...
Abstract—Unacceptable execution time of Non-rigid regis-tration (NRR) often presents a major obstacl...
Intensity based two-dimensional to three-dimensional (2D- 3D) registration algorithms usually rely o...
The role of computers in medical image display and analysis continues to be one of the most computat...
Abstract–We have developed code to test the potential of GPUs for speeding up typical 3D Medical Ima...
Medical image registration is time-consuming but can be sped up employing parallel processing on the...
Abstract — For the past decade, improving the performance and accuracy of medical image registration...
Purpose: Image registration is an important aspect of medical image analysis and a key component in ...
In this article, we look at early, recent, and state-of-the-art methods for registration of medical ...
Abstract. For many clinical applications, non-rigid registration of med-ical images demands cost-eff...
Medical image registration tasks of large volume datasets, especially in the non-rigid case, often p...
We present a method for fast phase based registration of volume data for medical applications. As th...
In the medical field, volume rendering provides good quality 3D visualizations but is still not enou...
The registration of multi-modal medical image data is important in the fields of image guided surger...
High Performance Deformable Image Registration Algorithms for Manycore Processors develops highly da...
An efficient implementation are necessary, as most medical imaging methods are computational expens...
Abstract—Unacceptable execution time of Non-rigid regis-tration (NRR) often presents a major obstacl...
Intensity based two-dimensional to three-dimensional (2D- 3D) registration algorithms usually rely o...
The role of computers in medical image display and analysis continues to be one of the most computat...
Abstract–We have developed code to test the potential of GPUs for speeding up typical 3D Medical Ima...