Handwritten Numeral String Recognition : Effects of Character Normalization and Feature Extraction(String Recognition, <Special Section>Document Image Understanding and Digital Documents)
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概要
- 論文の詳細を見る
The performance of integrated segmentation and recognition of handwritten numeral strings relies on the classification accuracy and the non-character resistance of the underlying character classifier, which is variable depending on the techniques of pattern normalization, feature extraction, and classifier structure. In this paper, we evaluate the effects of 12 normalization functions and four selected feature types on numeral string recognition. Slant correction (deslant) is combined with the normalization functions and features so as to create 96 feature vectors, which are classified using two classifier structures. In experiments on numeral string images of the NIST Special Database 19, the classifiers have yielded very high string recognition accuracies. We show the superiority of moment normalization with adaptive aspect ratio mapping and the gradient direction feature, and observed that slant correction is beneficial to string recognition when combined with good normalization methods.
- 社団法人電子情報通信学会の論文
- 2005-08-01
著者
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Sako Hiroshi
Hitachi Ltd. Kokubunji‐shi Jpn
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Sako Hiroshi
Central Research Laboratory Hitachi Ltd.
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LIU Cheng-Lin
Central Research Laboratory, Hitachi, Ltd.
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FUJISAWA Hiromichi
Central Research Laboratory, Hitachi, Ltd.
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Liu Cheng-lin
Central Research Laboratory Hitachi Ltd.
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Fujisawa Hiromichi
Central Research Laboratory Hitachi Ltd.
関連論文
- Handwritten Numeral String Recognition : Effects of Character Normalization and Feature Extraction(String Recognition, Document Image Understanding and Digital Documents)
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