Image data model for an efficient multi-criteria query: a case in medical databases

Since the last two decades, image database management has been practiced using different image representation methods. In the literature, images are represented using two paradigms: the metadata-based and the content-based representations. Image retrieval using the metadata is done using the traditional database operations. However, image retrieval by its low-level features requires similarity-based operations. Practice has shown that both types of operations are needed for an efficient image database management system. Particularly in medical image databases, such a mixed form of retrieval is very important. We first present a global image data model that supports both metadata and low-level descriptions of images. We illustrate our work with real examples in the medical domain. Then, using an original image data repository model, we show how relational and similarity-based operations can be integrated. Both image and salient object are considered in our model. A prototype called MIMS (medical image management system) has been realized to validate the main aspects of our approach.

[1]  W. Grosky,et al.  An Image Data Model , 2000, VISUAL.

[2]  William I. Grosky,et al.  Managing multimedia information in database systems , 1997, CACM.

[3]  Daniel Tretter,et al.  A Web-Based Secure System for the Distributed Printing of Documents and Images , 1998, J. Vis. Commun. Image Represent..

[4]  Nicholas Ayache,et al.  Medical Image Analysis: Progress over Two Decades and the Challenges Ahead , 2000, IEEE Trans. Pattern Anal. Mach. Intell..

[5]  Christian Böhm,et al.  Fast parallel similarity search in multimedia databases , 1997, SIGMOD '97.

[6]  Mourad Mechkour,et al.  EMIR2: An Extended Model for Image Representation and Retrieval , 1995, DEXA.

[7]  A Flory,et al.  A four-dimensional approach to medical image retrieval. , 2001, Methods of information in medicine.

[8]  M. Tamer Özsu,et al.  DISIMA: an object-oriented approach to developing an image database system , 2000, Proceedings of 16th International Conference on Data Engineering (Cat. No.00CB37073).

[9]  Lionel Brunie,et al.  Similarity-based operators and query optimization for multimedia database systems , 2001, Proceedings 2001 International Database Engineering and Applications Symposium.

[10]  Shu Lin,et al.  DISIMA: a distributed and interoperable image database system , 2000, SIGMOD '00.

[11]  Andrew U. Frank,et al.  A Topological Data Model for Spatial Databases , 1990, SSD.

[12]  Amit P. Sheth,et al.  Multimedia Data Management: Using Metadata to Integrate and Apply Digital Media , 1998 .

[13]  Lionel Brunie,et al.  Similarity-Based Operators in Image Database Systems , 2001, WAIM.

[14]  Ricky K. Taira,et al.  Knowledge-Based Image Retrieval with Spatial and Temporal Constructs , 1998, IEEE Trans. Knowl. Data Eng..

[15]  Atsuo Yoshitaka,et al.  A Survey on Content-Based Retrieval for Multimedia Databases , 1999, IEEE Trans. Knowl. Data Eng..

[16]  Jian-Kang Wu Content-Based Indexing of Multimedia Databases , 1997, IEEE Trans. Knowl. Data Eng..

[17]  Michael Stonebraker,et al.  Object-Relational DBMSs, Second Edition , 1998 .

[18]  Arnold W. M. Smeulders,et al.  Crossing the Divide Between Computer Vision and Databases in Search of Image Databases , 1998, VDB.

[19]  Richard Chbeir,et al.  A global description of medical image with high precision , 2000, Proceedings IEEE International Symposium on Bio-Informatics and Biomedical Engineering.