Offline Cursive Word Recognition using Continuous Density Hidden Markov Models Trained with PCA or ICA Features

ICPR(2002)

引用 32|浏览6
摘要
This work presents an Offline Cursive Word Recognition System dealing with single writer samples. The system is based on a continuous density Hiddden Markov Model trained using either the raw data, or data transformed using Principal Component Analysis or Independent Component Analysis. Both techniques significantly improved the recognition rate of the system.Preprocessing, normalization and feature extraction are described as well as the training technique adopted. Several experiments were performed using a publicly available database. The accuracy obtained is the highest presented in the literature over the same data.
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关键词
document image processing,feature extraction,handwritten character recognition,hidden Markov models,independent component analysis,learning (artificial intelligence),optical character recognition,principal component analysis,ICA,PCA,continuous density hidden Markov models,database,experiments,feature extraction,handwritten characters,independent component analysis,normalization,offline cursive word recognition,preprocessing,principal component analysis,single writer samples,training technique
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