Statistical Region Merging technique belongs to the portfolio of very successful image segmentation methods across diverse domains and applications. The method is based on a solid probabilistic principle and was extended in various directions to suit specific applications, including those from medical domains. In its basic implementation the technique is based on a merging criterion relying on image pixel intensities. Sufficient to segment well some natural scene images, it often deteriorates dramatically when challenging medical images are segmented. In this study we introduce a new merging criterion into the method which utilizes texture characteristic of the image. We demonstrate that the enhanced criterion allows segmentation of knee bo...
Rationale and Objectives. The segmentation of textured anatomy from magnetic resonance images (MRI) ...
Many applications require the automatic identification of bone structures in CT scans. The segmentat...
Background : The collection and annotation of medical images are hindered by data scarcity, privacy,...
Statistical Region Merging technique belongs to the portfolio of very successful image segmentation ...
Segmentation of medical images is fundamental for many high-level applications. Unsupervised techniq...
Segmentation is one of the key steps in the process of developing anatomical models for calculation ...
Abstract. This paper presents a method for automatic segmentation of the tibia and femur in clinical...
. This paper presents a method for automatic segmentation of the tibia and femur in clinical magneti...
The detection of cartilage loss due to disease progression in Osteoarthritis remains a challenging p...
Automatic image analysis of magnetic resonance (MR) images of the knee is simplified by bringing the...
Osteoarthritic (OA) changes in knee joints can be assessed by analyzing the structure of trabecular ...
Unet architectures are being investigated for automatic image segmentation of bones in CT scans beca...
[[abstract]]Anterior knee pain (AKP) is a common pathological condition. The most obvious problem ca...
Segmentation of contrast-enhanced computed tomography (CECT) images enables quantitative evaluation ...
Abstract—This study aimed at developing a new automatic seg-mentation algorithm for human knee carti...
Rationale and Objectives. The segmentation of textured anatomy from magnetic resonance images (MRI) ...
Many applications require the automatic identification of bone structures in CT scans. The segmentat...
Background : The collection and annotation of medical images are hindered by data scarcity, privacy,...
Statistical Region Merging technique belongs to the portfolio of very successful image segmentation ...
Segmentation of medical images is fundamental for many high-level applications. Unsupervised techniq...
Segmentation is one of the key steps in the process of developing anatomical models for calculation ...
Abstract. This paper presents a method for automatic segmentation of the tibia and femur in clinical...
. This paper presents a method for automatic segmentation of the tibia and femur in clinical magneti...
The detection of cartilage loss due to disease progression in Osteoarthritis remains a challenging p...
Automatic image analysis of magnetic resonance (MR) images of the knee is simplified by bringing the...
Osteoarthritic (OA) changes in knee joints can be assessed by analyzing the structure of trabecular ...
Unet architectures are being investigated for automatic image segmentation of bones in CT scans beca...
[[abstract]]Anterior knee pain (AKP) is a common pathological condition. The most obvious problem ca...
Segmentation of contrast-enhanced computed tomography (CECT) images enables quantitative evaluation ...
Abstract—This study aimed at developing a new automatic seg-mentation algorithm for human knee carti...
Rationale and Objectives. The segmentation of textured anatomy from magnetic resonance images (MRI) ...
Many applications require the automatic identification of bone structures in CT scans. The segmentat...
Background : The collection and annotation of medical images are hindered by data scarcity, privacy,...