Abstract—We present a method to register kidneys from Computed Tomography (CT) scans with and without contrast enhancement. The method builds a patient-specific kidney shape model from the contrast enhanced image, and then matches it against automatically segmented candidate surfaces extracted from the pre-contrast image to find the alignment. Only the object of interest is used to drive the alignment, providing results that are robust to near-rigid relative motions of the kidney with respect to the surrounding tissues. Shape-based features are used, as opposed to intensity-based ones, and consequently the resulting registration is invariant to the inherent contrast variations. The contributions of this work are: a surface grouping and segm...
Abstract. This paper presents a method to register a preoperative CT volume to a sparse set of intra...
Surgical training for minimal invasive kidney interventions (MIKI) has huge importance within the ur...
In this paper, we present an automatic method to segment the kidney in 3D contrast-enhanced ultrasou...
This work presents a novel approach for model based segmentation of the kidney in images acquired by...
This work presents a novel approach for model based segmentation of the kidney in images acquired by...
Kidney segmentation is an essential step in developing any noninvasive computer-assisted diagnostic ...
In medical imaging, large amounts of data are created during each patient examination, especially us...
Subtraction of contrast enhanced magnetic resonance images acquired before and after the injection o...
International audienceThis paper presents a method to register a pre-operative Computed-Tomography (...
This paper presents a method to register a preoperative CT volume to a sparse set of intraoperative ...
Abstract Background Image segmentation is an essential and non trivial task in computer vision and m...
Despite several decades of research into segmentation techniques, automated medical image segmentati...
In this manuscript, we propose to adapt the B-Spline Explicit Active Surfaces (BEAS) framework for s...
This paper presents an approach for kidney segmentation on abdominal CT images as the first step of ...
With development of medical diagnostic and imaging techniques the sparing surgeries are facilitated....
Abstract. This paper presents a method to register a preoperative CT volume to a sparse set of intra...
Surgical training for minimal invasive kidney interventions (MIKI) has huge importance within the ur...
In this paper, we present an automatic method to segment the kidney in 3D contrast-enhanced ultrasou...
This work presents a novel approach for model based segmentation of the kidney in images acquired by...
This work presents a novel approach for model based segmentation of the kidney in images acquired by...
Kidney segmentation is an essential step in developing any noninvasive computer-assisted diagnostic ...
In medical imaging, large amounts of data are created during each patient examination, especially us...
Subtraction of contrast enhanced magnetic resonance images acquired before and after the injection o...
International audienceThis paper presents a method to register a pre-operative Computed-Tomography (...
This paper presents a method to register a preoperative CT volume to a sparse set of intraoperative ...
Abstract Background Image segmentation is an essential and non trivial task in computer vision and m...
Despite several decades of research into segmentation techniques, automated medical image segmentati...
In this manuscript, we propose to adapt the B-Spline Explicit Active Surfaces (BEAS) framework for s...
This paper presents an approach for kidney segmentation on abdominal CT images as the first step of ...
With development of medical diagnostic and imaging techniques the sparing surgeries are facilitated....
Abstract. This paper presents a method to register a preoperative CT volume to a sparse set of intra...
Surgical training for minimal invasive kidney interventions (MIKI) has huge importance within the ur...
In this paper, we present an automatic method to segment the kidney in 3D contrast-enhanced ultrasou...