Brain MR Images corrupted by RF- Inhomogeneity (bias artifact) exhibit brightness variations across the image. As a consequence, a standard Fuzzy C-Means (fern) segmentation algorithm may fail. In this work we show a new general-purpose bias removing algorithm, which can be used as a pre-processing step for a fern segmentation. We also compare our experimental results with the ones achieved by using E2 D - H U M filter, showing an improvement in brain segmentation and bias removal
This paper proposes a method for fully automatic segmentation of brain tissues and MR bias field cor...
Objective. An important artifact corrupting Magnetic Resonance Images is the rf inhomogeneity, also ...
In this work, a fast and robust method for MR brain segmentation is proposed. This method is based o...
Brain MR Images corrupted by RF- Inhomogeneity (bias artifact) exhibit brightness variations across ...
Brain MR Images corrupted by RF-Inhomogeneity exhibit brightness variations in such a way that a sta...
Absrrod-A fuzzy c-means based adaptive clustering algorithm is proposed for the furzy segmentation o...
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...
Summary. Bias field signal is a low-frequency and very smooth signal that corrupts MRI images specia...
In brain magnetic resonance (MR) images, image quality is often degraded due to the influence of noi...
Typically, brain MR images present significant intensity variation across patients and scanners. Con...
Artifacts in magnetic resonance images can make conventional intensity-based segmentation methods ve...
Magnetic resonance imaging (MRI) is a widely used non-invasive visualization technique in medical fi...
As pointed out by Harris et al (1), segmentation of gray matter and white matter on magnetic resonan...
The segmentation results of brain magnetic resonance imaging (MRI) have important guiding significan...
This paper proposes a method for fully automatic segmentation of brain tissues and MR bias field cor...
Objective. An important artifact corrupting Magnetic Resonance Images is the rf inhomogeneity, also ...
In this work, a fast and robust method for MR brain segmentation is proposed. This method is based o...
Brain MR Images corrupted by RF- Inhomogeneity (bias artifact) exhibit brightness variations across ...
Brain MR Images corrupted by RF-Inhomogeneity exhibit brightness variations in such a way that a sta...
Absrrod-A fuzzy c-means based adaptive clustering algorithm is proposed for the furzy segmentation o...
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...
Summary. Bias field signal is a low-frequency and very smooth signal that corrupts MRI images specia...
In brain magnetic resonance (MR) images, image quality is often degraded due to the influence of noi...
Typically, brain MR images present significant intensity variation across patients and scanners. Con...
Artifacts in magnetic resonance images can make conventional intensity-based segmentation methods ve...
Magnetic resonance imaging (MRI) is a widely used non-invasive visualization technique in medical fi...
As pointed out by Harris et al (1), segmentation of gray matter and white matter on magnetic resonan...
The segmentation results of brain magnetic resonance imaging (MRI) have important guiding significan...
This paper proposes a method for fully automatic segmentation of brain tissues and MR bias field cor...
Objective. An important artifact corrupting Magnetic Resonance Images is the rf inhomogeneity, also ...
In this work, a fast and robust method for MR brain segmentation is proposed. This method is based o...