DocumentCode :
153318
Title :
Curriculum Learning for Handwritten Text Line Recognition
Author :
Louradour, Jerome ; Kermorvant, Christopher
Author_Institution :
A2iA S.A., Paris, France
fYear :
2014
fDate :
7-10 April 2014
Firstpage :
56
Lastpage :
60
Abstract :
Recurrent Neural Networks (RNN) have recently achieved the best performance in off-line Handwriting Text Recognition. At the same time, learning RNN by gradient descent leads to slow convergence, and training times are particularly long when the training database consists of full lines of text. In this paper, we propose an easy way to accelerate stochastic gradient descent in this set-up, and in the general context of learning to recognize sequences. The principle is called Curriculum Learning, or shaping. The idea is to first learn to recognize short sequences before training on all available training sequences. Experiments on three different handwritten text databases (Rimes, IAM, OpenHaRT) show that a simple implementation of this strategy can significantly speed up the training of RNN for Text Recognition, and even significantly improve performance in some cases.
Keywords :
document image processing; gradient methods; handwritten character recognition; learning (artificial intelligence); recurrent neural nets; stochastic processes; text detection; IAM; OpenHaRT; RNN; Rimes; curriculum learning; curriculum shaping; handwritten text databases; handwritten text line recognition; off-line handwriting text recognition; recurrent neural networks; stochastic gradient descent; training database; training sequences; Convergence; Databases; Handwriting recognition; Recurrent neural networks; Text recognition; Training; Yttrium; Curriculum; Handwritten Text Recognition; Recurrent Neural Network; Shaping; Stochastic Gradient Descent;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Document Analysis Systems (DAS), 2014 11th IAPR International Workshop on
Conference_Location :
Tours
Print_ISBN :
978-1-4799-3243-6
Type :
conf
DOI :
10.1109/DAS.2014.38
Filename :
6830969
Link To Document :
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