A fuzzy object retrieval system for image understanding

The authors address the problem of object recognition in the field of image understanding systems. They show how the problem can be approached exploiting information retrieval techniques. That is, given a collection of object models, the target object is regarded as a query and object recognition is regarded as a query processing task aimed at locating the models which best fulfil the given one. Since the problem is fuzzy in nature, the inference mechanism is based on a fuzzy set theoretical framework. The authors also show how the object-oriented paradigm provides the right framework to represent effectively and efficiently the knowledge about the objects. Each real world entity in the domain is mapped on a collection of composite objects, hierarchically organized, each level representing a specific abstraction level at which the entity is regarded. The authors discuss implementation issues with reference, to the retrieval component and related techniques that have been devised to improve the computational efficiency of the system.<<ETX>>

[1]  Craig Harris,et al.  Combining language and database advances in an object-oriented development environment , 1987, OOPSLA 1987.

[2]  Paul R. Cohen,et al.  Information retrieval by constrained spreading activation in semantic networks , 1987, Inf. Process. Manag..

[3]  Paul R. Cohen,et al.  Retrieving documents by plausible inference: a priliminary study , 1988, SIGIR '88.

[4]  D.I. Moldovan,et al.  A Hierarchical Knowledge Based System for Airplane Classification , 1988, IEEE Trans. Software Eng..

[5]  Peter J. Burt,et al.  `Smart Sensing' in machine vision , 1988 .

[6]  Dario Lucarella,et al.  FIRST: Fuzzy Information Retrieval SysTem , 1991, J. Inf. Sci..

[7]  David Maier,et al.  Integrating an object server with other worlds , 1987, TOIS.

[8]  Rangasami L. Kashyap,et al.  An Object-Oriented Knowledge Representation for Spatial Information , 1988, IEEE Trans. Software Eng..

[9]  Patrick Bosc,et al.  Flexible selection among objects: a framework based on fuzzy sets , 1988, SIGIR '88.

[10]  A. Del Bimbo,et al.  Integrating object oriented programming paradigm concepts in designing a vision and pattern recognition system architecture , 1990, [1990] Proceedings. 10th International Conference on Pattern Recognition.

[11]  D. Lucarella Heuristics to locate the best document set in information retrieval systems , 1989, Eighth Annual International Phoenix Conference on Computers and Communications. 1989 Conference Proceedings.

[12]  D. Lucarella,et al.  Uncertainty in information retrieval: an approach based on fuzzy sets , 1990, Ninth Annual International Phoenix Conference on Computers and Communications. 1990 Conference Proceedings.

[13]  Dario Lucarella,et al.  A document retrieval system based on nearest neighbour searching , 1988, J. Inf. Sci..

[14]  C. J. van Rijsbergen,et al.  A Non-Classical Logic for Information Retrieval , 1997, Comput. J..

[15]  William S. Havens,et al.  Knowledge Structuring and Constraint Satisfaction: The Mapsee Approach , 1988, IEEE Trans. Pattern Anal. Mach. Intell..

[16]  Edward A. Fox,et al.  Development of the coder system: A testbed for artificial intelligence methods in information retrieval , 1987, Inf. Process. Manag..

[17]  Daniel G. Bobrow,et al.  Object-Oriented Programming: Themes and Variations , 1989, AI Mag..