Consensus Network Based Hypotheses Combination for Arabic Offline Handwriting Recognition

Pattern Recognition(2010)

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摘要
Offline handwriting recognition (OHR) is an extremely challenging task because of many factors including variations in writing style, writing device and material, and noise in the scanning and collection process. Due to the diverse nature of the above challenges, it is highly unlikely that a single recognition technique can address all the characteristics of real-world handwritten documents. Therefore, one must consider designing different systems, each addressing specific challenges in the handwritten corpus, and then combining the hypotheses from these diverse systems. To that end, we present an innovative approach for combining hypotheses from multiple handwriting recognition systems. Our approach is based on generating a consensus network using hypotheses from a diverse set of handwriting recognition systems. Next, we decode the consensus network for producing the best possible hypothesis given an error criterion. Experimental results on an Arabic OHR task show that our combination algorithm outperforms the NIST ROVER technique and results in a 7% relative reduction in the word error rate over the single best OHR system.
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关键词
handwriting recognition system,consensus network,single best ohr system,single recognition technique,hypotheses combination,diverse system,arabic ohr task show,diverse set,multiple handwriting recognition system,offline handwriting recognition,arabic offline handwriting recognition,diverse nature,nist,word error rate,lattices,handwriting recognition,speech recognition,decoding,hidden markov models
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