The RWTH Large Vocabulary Arabic Handwriting Recognition System

Document Analysis Systems(2014)

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摘要
This paper describes the RWTH system for large vocabulary Arabic handwriting recognition. The recognizer is based on Hidden Markov Models (HMMs) with state of the art methods for visual/language modeling and decoding. The feature extraction is based on Recurrent Neural Networks (RNNs) which estimate the posterior distribution over the character labels for each observation. Discriminative training using the Minimum Phone Error (MPE) criterion is used to train the HMMs. The recognition is done with the help of n-gram Language Models (LMs) trained using in-domain text data. Unsupervised writer adaptation is also performed using the Constrained Maximum Likelihood Linear Regression (CMLLR) feature adaptation. The RWTH Arabic handwriting recognition system gave competitive results in previous handwriting recognition competitions. The used techniques allows to improve the performance of the system participating in the OpenHaRT 2013 evaluation.
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关键词
rwth arabic handwriting recognition system, hidden markov models, recurrent neural networks,maximum likelihood estimation,regression analysis,hidden markov models,speech recognition,recurrent neural networks,language modeling,hmm,posterior distribution,language models,feature extraction,handwriting recognition
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