Impact of a codebook filtering step on a galois lattice structure for graphics recognition

In this paper, we propose an evaluation of the impact of a codebook filtering step on the recognition rate of a Galois lattice classifier. Unlike the usual approach which only considers a whole visual dictionary and is likely to over-fitting, we boost the Galois lattice using a filtered dictionary by assigning a probability of appearance to each visual word in a symbol model. The retrieval performance and behavior of the method have been compared to state-of-the art and proved that is suitable to the recognition process. Experimental results show that the Galois Lattice classifier combined with a filtered codebook outperforms classic classifiers. Interestingly, due to the high selection of features from the dictionary, the accuracy improvement is obtained with a considerable computational cost reduction.

[1]  Bernhard Ganter,et al.  Formal Concept Analysis: Mathematical Foundations , 1998 .

[2]  Claudio Carpineto,et al.  Using Concept Lattices for Text Retrieval and Mining , 2005, Formal Concept Analysis.

[3]  Salvatore Tabbone,et al.  Symbol Descriptor Based on Shape Context and Vector Model of Information Retrieval , 2008, 2008 The Eighth IAPR International Workshop on Document Analysis Systems.

[4]  Salvatore Tabbone,et al.  A Novel Approach for Graphics Recognition Based on Galois Lattice and Bag of Words Representation , 2011, 2011 International Conference on Document Analysis and Recognition.

[5]  Salvatore Tabbone,et al.  Symbol Recognition Using a Galois Lattice of Frequent Graphical Patterns , 2012, 2012 10th IAPR International Workshop on Document Analysis Systems.

[6]  Salvatore Tabbone,et al.  A Bayesian network for combining descriptors: application to symbol recognition , 2010, International Journal on Document Analysis and Recognition (IJDAR).

[7]  Mickaël Coustaty,et al.  On the Joint Use of a Structural Signature and a Galois Lattice Classifier for Symbol Recognition , 2007, GREC.