DocumentCode :
2711615
Title :
A stochastic neural model for fast classification of binary images
Author :
Pires, Glauber M. ; Araújo, Aluizio F R
Author_Institution :
Inf. Center, Fed. Univ. of Pernambuco, Recife, Brazil
fYear :
2009
fDate :
14-19 June 2009
Firstpage :
2547
Lastpage :
2552
Abstract :
In this article, we propose a new approach for fast recognition of objects from two-dimensional binary images using descriptors of curvature, the moment and an artificial neural network. This model associates a coefficient of certainty for each classification. Two image descriptors where used, the Hu moments and curvature scale space, to provide a reduced representation invariant to image transformations, and a neural network applying a Gibbs distribution of probability is used to calculate the coefficient of certainty to link an image to one class. A benchmark data set is used to demonstrate the usefulness of the proposed methodology. The robustness of the proposed approach is also evaluated under rotation, scale transformations. The evaluation of the performance is based on the accuracy in the framework of a Monte Carlo experiment.
Keywords :
Monte Carlo methods; image classification; neural nets; object recognition; statistical distributions; stochastic processes; Gibbs distribution; Monte Carlo experiment; artificial neural network; benchmark data set; binary image classification; curvature descriptor; curvature scale space; object recognition; probability distribution; stochastic neural model; two-dimensional binary images; Artificial neural networks; Content based retrieval; Digital images; Image databases; Image recognition; Image retrieval; Image storage; Neural networks; Probability; Stochastic processes;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Neural Networks, 2009. IJCNN 2009. International Joint Conference on
Conference_Location :
Atlanta, GA
ISSN :
1098-7576
Print_ISBN :
978-1-4244-3548-7
Electronic_ISBN :
1098-7576
Type :
conf
DOI :
10.1109/IJCNN.2009.5178896
Filename :
5178896
Link To Document :
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