In this article, we present the algorithms and results of our participation in the medical image annotation and retrieval tasks of ImageCLEFmed 2006. We exploit both global features and local features to describe medical images in the annotation task. We examine different kinds global features and extract the most descriptive ones, which effectively capture the intensity, texture and shape characters of the image content, to represent the radiographs. We also evaluate the descriptive power of local features, i.e. local image patches, for medical images. A newly developed spatial pyramid matching algorithm is applied to measure the similarity between images represented by sets of local features. Both descriptors use multi-class SVM to classi...
Abstract. Voluminous medical images are generated daily. They are critical assets for medical diagno...
Abstract — Medical images are being digitized and the medical databases are rapidly growing. These i...
Over the past decades, medical image analytics was greatly facilitated by the explosion of digital i...
Content-based medical image retrieval is an important tool for doctors in their daily activity. In t...
The ImageCLEF 2007 Medical Automatic Annotation Task, base on the IRMA project a database of 11,000 ...
This research work is to develop an efficient and powerful medical image retrieval system to classif...
This paper describes the medical image retrieval and annotation tasks of ImageCLEF 2006. Both tasks ...
Abstract. This paper describes the medical image retrieval and annotation tasks of ImageCLEF 2006. B...
Content based image retrieval is highly relevant in med-ical imaging, since it makes vast amounts of...
Medical image retrieval systems have gained high interest in the scientific community due to the adv...
Abstract. This paper describes the medical image retrieval and anno-tation tasks of ImageCLEF 2006. ...
Abstract. Global features describe the image content by a small number of numerical values, which ar...
International audienceThis paper explores our solution aiming to provide efficient retrieval of medi...
International audienceThis paper explores our solution aiming to provide efficient retrieval of medi...
Over the past decades, medical image analytics was greatly facilitated by the explosion of digital i...
Abstract. Voluminous medical images are generated daily. They are critical assets for medical diagno...
Abstract — Medical images are being digitized and the medical databases are rapidly growing. These i...
Over the past decades, medical image analytics was greatly facilitated by the explosion of digital i...
Content-based medical image retrieval is an important tool for doctors in their daily activity. In t...
The ImageCLEF 2007 Medical Automatic Annotation Task, base on the IRMA project a database of 11,000 ...
This research work is to develop an efficient and powerful medical image retrieval system to classif...
This paper describes the medical image retrieval and annotation tasks of ImageCLEF 2006. Both tasks ...
Abstract. This paper describes the medical image retrieval and annotation tasks of ImageCLEF 2006. B...
Content based image retrieval is highly relevant in med-ical imaging, since it makes vast amounts of...
Medical image retrieval systems have gained high interest in the scientific community due to the adv...
Abstract. This paper describes the medical image retrieval and anno-tation tasks of ImageCLEF 2006. ...
Abstract. Global features describe the image content by a small number of numerical values, which ar...
International audienceThis paper explores our solution aiming to provide efficient retrieval of medi...
International audienceThis paper explores our solution aiming to provide efficient retrieval of medi...
Over the past decades, medical image analytics was greatly facilitated by the explosion of digital i...
Abstract. Voluminous medical images are generated daily. They are critical assets for medical diagno...
Abstract — Medical images are being digitized and the medical databases are rapidly growing. These i...
Over the past decades, medical image analytics was greatly facilitated by the explosion of digital i...