DocumentCode
594811
Title
Long-short term memory neural networks language modeling for handwriting recognition
Author
Frinken, Volkmar ; Zamora-Martinez, Francisco ; Espana-Boquera, Salvador ; Castro-Bleda, Maria Jose ; Fischer, Anath ; Bunke, Horst
Author_Institution
Centre de Visio per Computador, Univ. Autonoma de Bacelona, Bellaterra, Spain
fYear
2012
fDate
11-15 Nov. 2012
Firstpage
701
Lastpage
704
Abstract
Unconstrained handwritten text recognition systems maximize the combination of two separate probability scores. The first one is the observation probability that indicates how well the returned word sequence matches the input image. The second score is the probability that reflects how likely a word sequence is according to a language model. Current state-of-the-art recognition systems use statistical language models in form of bigram word probabilities. This paper proposes to model the target language by means of a recurrent neural network with long-short term memory cells. Because the network is recurrent, the considered context is not limited to a fixed size especially as the memory cells are designed to deal with long-term dependencies. In a set of experiments conducted on the IAM off-line database we show the superiority of the proposed language model over statistical n-gram models.
Keywords
content-addressable storage; handwriting recognition; image matching; image sequences; probability; recurrent neural nets; simulation languages; statistical analysis; text analysis; word processing; IAM offline database; bigram word probability; image matching; long-short term memory cells; observation probability; probability score; recurrent neural network; statistical language model; statistical n-gram model; unconstrained handwritten text recognition; word sequence; Artificial neural networks; Context; Handwriting recognition; Probability; Testing; Training;
fLanguage
English
Publisher
ieee
Conference_Titel
Pattern Recognition (ICPR), 2012 21st International Conference on
Conference_Location
Tsukuba
ISSN
1051-4651
Print_ISBN
978-1-4673-2216-4
Type
conf
Filename
6460231
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