The quality of automatic 3D medical segmentation algorithms needs to be assessed on test datasets comprising several 3D images (i.e., instances of an organ). The experts need to compare the segmentation quality across the dataset in order to detect systematic segmentation problems. However, such comparative evaluation is not supported well by current methods. We present a novel system for assessing and comparing segmentation quality in a dataset with multiple 3D images. The data is analyzed and visualized in several views. We detect and show regions with systematic segmentation quality characteristics. For this purpose, we extended a hierarchical clustering algorithm with a connectivity criterion. We combine quality values across the datase...
The quantification of similarity between image segmen-tations is a complex yet important task. The i...
Despite recent progress of automatic medical image segmentation techniques, fully automatic results ...
Accurate image segmentation is important for many medical imaging applications, whereas it remains c...
The quality of automatic 3D medical segmentation algorithms needs to be assessed on test datasets co...
Abstract. 3D medical image segmentation is needed for diagnosis and treatment. As manual segmentatio...
3D medical image segmentation is needed for diagnosis and treatment. As manual segmentation is very ...
Quantitative comparison of automatic results for multi-organ segmentation by means of Dice scores of...
All medical image segmentation algorithms need to be validated and compared, and yet no evaluation f...
Abstract The evaluation of 3D medical image segmenta-tion quality requires a reliable detailed compa...
The importance of medical image segmentation increases in fields like treatment planning or computer...
The importance of medical image segmentation increases in fields like treatment planning or computer...
All medical image segmentation algorithms need to be validated and compared, yet no evaluation frame...
In this paper we present an evaluation of four different 3D segmentation algorithms with respect to ...
In this paper we present an evaluation of four different 3D segmentation algorithms with respect to ...
Evaluating the quality of segmentations is an important process in image processing, especially in t...
The quantification of similarity between image segmen-tations is a complex yet important task. The i...
Despite recent progress of automatic medical image segmentation techniques, fully automatic results ...
Accurate image segmentation is important for many medical imaging applications, whereas it remains c...
The quality of automatic 3D medical segmentation algorithms needs to be assessed on test datasets co...
Abstract. 3D medical image segmentation is needed for diagnosis and treatment. As manual segmentatio...
3D medical image segmentation is needed for diagnosis and treatment. As manual segmentation is very ...
Quantitative comparison of automatic results for multi-organ segmentation by means of Dice scores of...
All medical image segmentation algorithms need to be validated and compared, and yet no evaluation f...
Abstract The evaluation of 3D medical image segmenta-tion quality requires a reliable detailed compa...
The importance of medical image segmentation increases in fields like treatment planning or computer...
The importance of medical image segmentation increases in fields like treatment planning or computer...
All medical image segmentation algorithms need to be validated and compared, yet no evaluation frame...
In this paper we present an evaluation of four different 3D segmentation algorithms with respect to ...
In this paper we present an evaluation of four different 3D segmentation algorithms with respect to ...
Evaluating the quality of segmentations is an important process in image processing, especially in t...
The quantification of similarity between image segmen-tations is a complex yet important task. The i...
Despite recent progress of automatic medical image segmentation techniques, fully automatic results ...
Accurate image segmentation is important for many medical imaging applications, whereas it remains c...