DocumentCode
2060577
Title
A neural-based architecture for spot-noisy logo recognition
Author
Cesarini, F. ; Francesconi, E. ; Gori, M. ; Marinai, S. ; Sheng, J.Q. ; Soda, G.
Author_Institution
Dept. of Syst. & Inf., Florence Univ., Italy
Volume
1
fYear
1997
fDate
18-20 Aug 1997
Firstpage
175
Abstract
Much attention has recently been paid to the recognition of graphical objects, such as company logos and trademarks. Recognizing these objects facilitates the recognition of document classes. Some promising results have been achieved by using autoassociator-based artificial neural networks (AANN) in the presence of homogeneously distributed noise. However, the performance drops significantly when dealing with spot-noisy logos, where strips or blobs produce a partial obstruction of the pictures. We propose a new approach for training AANNs especially conceived for dealing with spot noise. The basic idea is to introduce new metrics for assessing the reproduction error in AANNs. The proposed algorithm, referred to as spot-backpropagation (S-BP), is significantly more robust with respect to spot-noise than classical Euclidean norm-based backpropagation (BP). Our experimental results are based on a database of 88 real logos that are artificially corrupted by spot-noise
Keywords
backpropagation; document image processing; industrial property; neural nets; noise; object recognition; Sobel operator; autoassociator-based artificial neural networks; company logos; document classes; graphical objects; homogeneously distributed noise; image defect models; logo recognition; neural net; neural-based architecture; partial obstruction; reproduction error; spot noise; spot-backpropagation; spot-noisy logo recognition; trademarks; Artificial neural networks; Backpropagation algorithms; Image databases; Image recognition; Neural networks; Noise generators; Noise robustness; Strips; Trademarks;
fLanguage
English
Publisher
ieee
Conference_Titel
Document Analysis and Recognition, 1997., Proceedings of the Fourth International Conference on
Conference_Location
Ulm
Print_ISBN
0-8186-7898-4
Type
conf
DOI
10.1109/ICDAR.1997.619836
Filename
619836
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