The National Cancer Institute has collected a large database of digitized 35mm slides of the uterine cervix, the idea being to build a system enabling to study the evolution of lesions related to cervical cancer. In taking the first few steps towards this goal, the objective of this work is to develop and evaluate methodologies required for visual-based (i.e. contentbased) indexing and retrieval that substantially improve information management of such a database. In this paper we model the properties of three tissue types using color and texture features, and use these models for image segmentation. Statistical modeling and segmentation tools are used for the task.
Cervical cancer is the third most common cancer in women worldwide and the leading cause of cancer d...
Cancer of the uterine cervix is one of the most common cancers in women. An effective screening prog...
texture analysis, cervical cancer, statistical textural feature, energy, entropy. (xiv + 60 + attach...
This work is motivated by the need for visual information management in the growing field of digital...
Cervical cancer is the second most common type of cancer that prevails among women. The death rate d...
Content-based indexing and retrieval is gaining increasing interest in the medical domain with the g...
We propose and verify a method for color-based clus-ter segmentation of the various tissues from ect...
In this work we focus on the generation of reliable ground truth data for a large medical repository...
The National Cancer Institute has collected a large database of uterine cervix images, termed “cervi...
Abstract- Features of the cervical cytology cells determine the severity of cervical cancer. They ar...
For radiation therapy of cervical cancer, segmentation of the cervix and the surrounding organs are ...
The prototype of a system to assist the physicians in dif-ferential diagnosis of lymphoproliferative...
The traditional process for detecting the cervical cancer is called Pap smear testing and it is the ...
This thesis develops image segmentation methods for the application of automated cervical cancer scr...
Abstract—This paper presents a procedure for automatic extraction and segmentation of a class-specif...
Cervical cancer is the third most common cancer in women worldwide and the leading cause of cancer d...
Cancer of the uterine cervix is one of the most common cancers in women. An effective screening prog...
texture analysis, cervical cancer, statistical textural feature, energy, entropy. (xiv + 60 + attach...
This work is motivated by the need for visual information management in the growing field of digital...
Cervical cancer is the second most common type of cancer that prevails among women. The death rate d...
Content-based indexing and retrieval is gaining increasing interest in the medical domain with the g...
We propose and verify a method for color-based clus-ter segmentation of the various tissues from ect...
In this work we focus on the generation of reliable ground truth data for a large medical repository...
The National Cancer Institute has collected a large database of uterine cervix images, termed “cervi...
Abstract- Features of the cervical cytology cells determine the severity of cervical cancer. They ar...
For radiation therapy of cervical cancer, segmentation of the cervix and the surrounding organs are ...
The prototype of a system to assist the physicians in dif-ferential diagnosis of lymphoproliferative...
The traditional process for detecting the cervical cancer is called Pap smear testing and it is the ...
This thesis develops image segmentation methods for the application of automated cervical cancer scr...
Abstract—This paper presents a procedure for automatic extraction and segmentation of a class-specif...
Cervical cancer is the third most common cancer in women worldwide and the leading cause of cancer d...
Cancer of the uterine cervix is one of the most common cancers in women. An effective screening prog...
texture analysis, cervical cancer, statistical textural feature, energy, entropy. (xiv + 60 + attach...