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>A hybrid post-processing system for offline Handwritten Chinese Character Recognition based on a statistical language model
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A hybrid post-processing system for offline Handwritten Chinese Character Recognition based on a statistical language model
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机译:基于统计语言模型的离线手写汉字识别混合后处理系统
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摘要
This paper presents a post-processing system for improving the recognition rate of a Handwritten Chinese Character Recognition (HCCR) device. This three-stage hybrid post-processing system reduces the misclassification and rejection rates common in the single character recognition phase. The proposed system is novel in two respects: first, it reduces the misclassification rate by applying a dictionary-look-up strategy that bind the candidate characters into a word-lattice and appends the linguistic-prone characters into the candidate set; second, it identifies promising sentences by employing a distant Chinese word BI-Gram model with a maximum distance of three to select plausible words from the word-lattice. These sentences are then output as the upgraded result-Compared with one of our previous works in single Chinese character recognition, the proposed system improves absolute recognition rates by 12%.
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