The segmentation of medical images is a difficult task due to the inhomogeneous intensity variations that occurs during digital image acquisition, the complicated shape of the object, and the medical expert’s lack of semantic knowledge. Automated segmentation algorithms work well for some medical images, but no algorithm has been general enough to work for all medical images. In practice, most of the time the segmentation results are corrected by the experts before the actual use. In this work, we are motivated to determine how to make use of manually segmented data in automatic segmentation. The key idea is to transfer the ground truth segmentation from the database of train images to a given test image. The ground truth segmentation of MR...
This memo describes the stability testing of the TINA medical image segmentation algorithm de-scribe...
Abstract:Medical image segmentation is an essential and challenging aspect in computer aided diagnos...
Abstract. We propose a simple strategy to improve automatic medical image segmentation. The key idea...
In this paper, we present a novel method for image segmentation of the hip joint structure. The key ...
The image semantic segmentation challenge consists of classifying each pixel of an image (or just se...
An Image Segmentation Algorithm is an algorithm that delineates (an) object(s) of interest in an ima...
Segmentation is one of the key tools in medical image analysis that allows an accurate recognizing a...
Artificial Intelligence through supervised machine learning remains an attractive and popular resear...
This paper describes some achievements in the segmentation of medical images using artificial neural...
An image segmentation algorithm delineates (an) object(s) of interest in an image. Its output is ref...
Chapter 3International audienceSegmentation is one of the key tools in medical image analysis. The o...
Segmentation of regions of interest from medical images such as brain tumors and anatomic parts of b...
International audienceThis paper describes a hybrid level set approach for medical image segmentatio...
In recent decades, with increasing amount of medical data, clinical trials are designed and conducte...
In this paper, we present a novel, fast, hybrid and bi-level segmentation technique uniquely develop...
This memo describes the stability testing of the TINA medical image segmentation algorithm de-scribe...
Abstract:Medical image segmentation is an essential and challenging aspect in computer aided diagnos...
Abstract. We propose a simple strategy to improve automatic medical image segmentation. The key idea...
In this paper, we present a novel method for image segmentation of the hip joint structure. The key ...
The image semantic segmentation challenge consists of classifying each pixel of an image (or just se...
An Image Segmentation Algorithm is an algorithm that delineates (an) object(s) of interest in an ima...
Segmentation is one of the key tools in medical image analysis that allows an accurate recognizing a...
Artificial Intelligence through supervised machine learning remains an attractive and popular resear...
This paper describes some achievements in the segmentation of medical images using artificial neural...
An image segmentation algorithm delineates (an) object(s) of interest in an image. Its output is ref...
Chapter 3International audienceSegmentation is one of the key tools in medical image analysis. The o...
Segmentation of regions of interest from medical images such as brain tumors and anatomic parts of b...
International audienceThis paper describes a hybrid level set approach for medical image segmentatio...
In recent decades, with increasing amount of medical data, clinical trials are designed and conducte...
In this paper, we present a novel, fast, hybrid and bi-level segmentation technique uniquely develop...
This memo describes the stability testing of the TINA medical image segmentation algorithm de-scribe...
Abstract:Medical image segmentation is an essential and challenging aspect in computer aided diagnos...
Abstract. We propose a simple strategy to improve automatic medical image segmentation. The key idea...