[Min1998]
An object indexing methodology as support to object recognition
Authors:Mineau Guy W, Mounsif Lahboub, Jean-Marie Beaulieu
In Book:Advances in Artificial Intelligence, Canadian AI 1998
Université Laval
1998, pp. 72-85
Publisher:Springer Berlin Heidelberg
ISBN:978-3-540-69349-9
URL:https://link.springer.com/chapter/10.1007/3-540-64575-6_41
Abstract: This paper presents an object recognition methodology which uses a step-by-step discrimination process. This process is made possible by the use of a classification structure built over examples of the objects to recognize. Thus, our approach combines numerical vision (object recognition) with conceptual clustering, showing how the latter helps the former, giving another example of useful synergy among different AI techniques. It presents our application domain: the recognition of road signs, which must support semi-autonomous vehicles in their navigational task. The discrimination process allows appropriate actions to be taken by the recognizer with regard to the actual data it has to recognize the object from: light, angle, shading, etc., and with regard to its recognition capabilities and their associated cost. Therefore, this paper puts the emphasis on this multiple criteria adaptation capability, which is the novelty of our approach.
« An object indexing methodology as support to object recognition, »
Mineau Guy W, Mounsif Lahboub, Jean-Marie Beaulieu,
in Advances in Artificial Intelligence, Canadian AI 1998, Université Laval, Springer Berlin Heidelberg, 1998, pp. 72-85.
[Bibtex]
@incollection{Min1998,
author = {Mineau, Guy W and Lahboub, Mounsif and Beaulieu, Jean-Marie},
title = {An object indexing methodology as support to object recognition},
booktitle = {Advances in Artificial Intelligence, Canadian AI 1998},
editor = {},
publisher = {Springer Berlin Heidelberg},
address = {Universit{\'e} Laval},
pages = {72-85},
year = {1998},
month = {},
url = {https://link.springer.com/chapter/10.1007/3-540-64575-6_41},
isbn = {978-3-540-69349-9},
doi = {10.1007/3-540-64575-6_41},
mypdf = {5},
abstract = {This paper presents an object recognition methodology which uses a step-by-step discrimination process. This process is made possible by the use of a classification structure built over examples of the objects to recognize. Thus, our approach combines numerical vision (object recognition) with conceptual clustering, showing how the latter helps the former, giving another example of useful synergy among different AI techniques. It presents our application domain: the recognition of road signs, which must support semi-autonomous vehicles in their navigational task. The discrimination process allows appropriate actions to be taken by the recognizer with regard to the actual data it has to recognize the object from: light, angle, shading, etc., and with regard to its recognition capabilities and their associated cost. Therefore, this paper puts the emphasis on this multiple criteria adaptation capability, which is the novelty of our approach.},
keywords = {}
}DOWNLOAD this page printed version
Jean-Marie Beaulieu