Summary. Bias field signal is a low-frequency and very smooth signal that corrupts MRI images specially those produced by old MRI (Magnetic Resonance Imaging) machines. Image pro-cessing algorithms such as segmentation, texture analysis or classification that use the graylevel values of image pixels will not produce satisfactory results. A pre-processing step is needed to correct for the bias field signal before submitting corrupted MRI images to such algorithms or the algorithms should be modified. In this report we discuss two approaches to deal with bias field corruption. The first approach can be used as a preprocessing step where the corrupted MRI image is restored by dividing it by an estimated bias field signal using a surface fittin...
Magnetic resonance (MR) images are prone to inhomogeneity artefacts that hinder an efficient automat...
Magnetic Resonance images are often characterized by irregularly displaced luminance fluctuations th...
MR images are known to be distorted because of both gradient nonlinearity and imperfections in the B...
We propose a model-based method for fully automated bias field correction of MR brain images. The MR...
This work presents a new algorithm (nonuniform intensity correction; NIC) for correction of intensit...
Brain MR Images corrupted by RF- Inhomogeneity (bias artifact) exhibit brightness variations across ...
Dealing with the different artifacts in medical images is necessary to perform several tasks, includ...
Magnetic resonance imaging (MRI) scanners are a crucial diagnostic tool for radiologists. They are a...
We developed a novel algorithm to estimate bias fields from brain magnetic resonance (MR) images usi...
Objective. An important artifact corrupting Magnetic Resonance Images is the rf inhomogeneity, also ...
[[abstract]]An intensity inhomogeneity correction system includes a log operator which performs a lo...
Brain MR Images corrupted by RF-Inhomogeneity exhibit brightness variations in such a way that a sta...
Magnetic resonance imaging (MRI) is a widely used non-invasive visualization technique in medical fi...
In magnetic resonance imaging (MRI), bias fields are difficult to correct since they are inherently ...
Several algorithms exist for correcting the nonuniform intensity in magnetic resonance images caused...
Magnetic resonance (MR) images are prone to inhomogeneity artefacts that hinder an efficient automat...
Magnetic Resonance images are often characterized by irregularly displaced luminance fluctuations th...
MR images are known to be distorted because of both gradient nonlinearity and imperfections in the B...
We propose a model-based method for fully automated bias field correction of MR brain images. The MR...
This work presents a new algorithm (nonuniform intensity correction; NIC) for correction of intensit...
Brain MR Images corrupted by RF- Inhomogeneity (bias artifact) exhibit brightness variations across ...
Dealing with the different artifacts in medical images is necessary to perform several tasks, includ...
Magnetic resonance imaging (MRI) scanners are a crucial diagnostic tool for radiologists. They are a...
We developed a novel algorithm to estimate bias fields from brain magnetic resonance (MR) images usi...
Objective. An important artifact corrupting Magnetic Resonance Images is the rf inhomogeneity, also ...
[[abstract]]An intensity inhomogeneity correction system includes a log operator which performs a lo...
Brain MR Images corrupted by RF-Inhomogeneity exhibit brightness variations in such a way that a sta...
Magnetic resonance imaging (MRI) is a widely used non-invasive visualization technique in medical fi...
In magnetic resonance imaging (MRI), bias fields are difficult to correct since they are inherently ...
Several algorithms exist for correcting the nonuniform intensity in magnetic resonance images caused...
Magnetic resonance (MR) images are prone to inhomogeneity artefacts that hinder an efficient automat...
Magnetic Resonance images are often characterized by irregularly displaced luminance fluctuations th...
MR images are known to be distorted because of both gradient nonlinearity and imperfections in the B...