We present a new probabilistic classifier, called SOM-PNN classifier, for volume data classification and visualization. The new classifier produces probabilistic classification with Bayesian confidence measure which is highly desirable in volume rendering. Based on the SOM map trained with a large training data set, our SOM-PNN classifier performs the probabilistic classification using the PNN algorithm. This combined use of SOM and PNN overcomes the shortcomings of the parametric methods, the nonparametric methods, and the SOM method. The proposed SOM-PNN classifier has been used to segment the CT sloth data and the 20 human MRI brain volumes resulting in much more informative 3D rendering with more details and less artifacts than other me...
Abstract: In this paper, pnn with image and data processing techniques was employed to implement an ...
PET-CT provides aligned anatomical (CT) and functional (PET) images in a single scan, and has the po...
This article presents the study regarding the problem of dimensionality reduction in training data s...
supervised classification techniques result in very different probabilistic transfer functions when ...
We present a new hybrid neural network to perform the probabilistic classification of medical images...
Many state-of-the art visualization techniques must be tailored to the specific type of dataset, its...
A fully automated method has been developed for segmentation of four different structures in the neo...
In this paper, we propose a novel machine learning-based voxel classification method for highly-accu...
Abstract Many state-of-the art visualization techniques must be tailored to the spe-cific type of da...
The literature about partial volume (PV) segmentation of MR images is rather limited, and ageneral m...
Abstract—The increasing numbers of patient scans and the prevailing application of positron emission...
In this paper, we present a learning procedure called probabilistic boosting network (PBN) for joint...
The partial volume effect is an imaging artefact associated with tomographic biomedical imaging data...
AbstractWe present a technique for automatically assigning a neuroanatomical label to each voxel in ...
Abstract — In this paper, modified image segmentation techniques were applied on MRI scan images in ...
Abstract: In this paper, pnn with image and data processing techniques was employed to implement an ...
PET-CT provides aligned anatomical (CT) and functional (PET) images in a single scan, and has the po...
This article presents the study regarding the problem of dimensionality reduction in training data s...
supervised classification techniques result in very different probabilistic transfer functions when ...
We present a new hybrid neural network to perform the probabilistic classification of medical images...
Many state-of-the art visualization techniques must be tailored to the specific type of dataset, its...
A fully automated method has been developed for segmentation of four different structures in the neo...
In this paper, we propose a novel machine learning-based voxel classification method for highly-accu...
Abstract Many state-of-the art visualization techniques must be tailored to the spe-cific type of da...
The literature about partial volume (PV) segmentation of MR images is rather limited, and ageneral m...
Abstract—The increasing numbers of patient scans and the prevailing application of positron emission...
In this paper, we present a learning procedure called probabilistic boosting network (PBN) for joint...
The partial volume effect is an imaging artefact associated with tomographic biomedical imaging data...
AbstractWe present a technique for automatically assigning a neuroanatomical label to each voxel in ...
Abstract — In this paper, modified image segmentation techniques were applied on MRI scan images in ...
Abstract: In this paper, pnn with image and data processing techniques was employed to implement an ...
PET-CT provides aligned anatomical (CT) and functional (PET) images in a single scan, and has the po...
This article presents the study regarding the problem of dimensionality reduction in training data s...