[[abstract]]Automatic extraction of vertebra regions from a spinal magnetic resonance (MR) image is normally required as the first step to an intelligent spinal MR image diagnosis system. In this work, we develop a fully automatic vertebra detection and segmentation system, which consists of three stages; namely, AdaBoost-based vertebra detection, detection refinement via robust curve fitting, and vertebra segmentation by an iterative normalized cut algorithm. In order to produce an efficient and effective vertebra detector, a statistical learning approach based on an improved AdaBoost algorithm is proposed. A robust estimation procedure is applied on the detected vertebra locations to fit a spine curve, thus refining the above vertebra det...
The development of quantitative imaging biomarkers in medicine requires automatic delineation of rel...
Segmentation of vertebral structures in magnetic resonance (MR) images is challenging because of poo...
Objectives: Spinal diseases are very common; for example, the risk of osteoporotic fracture is 40% f...
[[abstract]]Automatically extracting vertebra regions from a spinal magnetic resonance image is norm...
Automatic localization and identification of vertebrae in medical images of the spine are core requi...
We propose a semi-automatic algorithm for the segmentation of vertebral bodies in magnetic resonance...
We propose a semi-automatic algorithm for the segmentation of vertebral bodies in magnetic resonance...
Segmentation of vertebral bodies is useful for diagnosis of certain spine pathologies, such as scoli...
The diagnosis of certain spine pathologies, such as scoliosis, spondylolisthesis and vertebral fract...
Precise segmentation and anatomical identification of the vertebrae provides the basis for automatic...
The study introduces a novel method for automatic segmentation of vertebral column tissue from MRI i...
In this doctoral thesis, the design of algorithms enabling the implementation of a fully automatic s...
This thesis addresses the problem of analysing clinical MRI using modern computer vision methods for...
Segmentation and identification of the vertebrae in CT images are important steps for automatic anal...
In this paper, we address the problems of fully automatic localization and segmentation of 3D verteb...
The development of quantitative imaging biomarkers in medicine requires automatic delineation of rel...
Segmentation of vertebral structures in magnetic resonance (MR) images is challenging because of poo...
Objectives: Spinal diseases are very common; for example, the risk of osteoporotic fracture is 40% f...
[[abstract]]Automatically extracting vertebra regions from a spinal magnetic resonance image is norm...
Automatic localization and identification of vertebrae in medical images of the spine are core requi...
We propose a semi-automatic algorithm for the segmentation of vertebral bodies in magnetic resonance...
We propose a semi-automatic algorithm for the segmentation of vertebral bodies in magnetic resonance...
Segmentation of vertebral bodies is useful for diagnosis of certain spine pathologies, such as scoli...
The diagnosis of certain spine pathologies, such as scoliosis, spondylolisthesis and vertebral fract...
Precise segmentation and anatomical identification of the vertebrae provides the basis for automatic...
The study introduces a novel method for automatic segmentation of vertebral column tissue from MRI i...
In this doctoral thesis, the design of algorithms enabling the implementation of a fully automatic s...
This thesis addresses the problem of analysing clinical MRI using modern computer vision methods for...
Segmentation and identification of the vertebrae in CT images are important steps for automatic anal...
In this paper, we address the problems of fully automatic localization and segmentation of 3D verteb...
The development of quantitative imaging biomarkers in medicine requires automatic delineation of rel...
Segmentation of vertebral structures in magnetic resonance (MR) images is challenging because of poo...
Objectives: Spinal diseases are very common; for example, the risk of osteoporotic fracture is 40% f...