Proceedings Article10.1109/ICDAR.2003.1227670
Accelerating large character set recognition using pivots
Yiping Yang,O. Velek,Masaki Nakagawa +2 more
- 03 Aug 2003
- Vol. 2, pp 262-267
TL;DR: This paper proposes a method to accelerate character recognition of a large character set by employing pivots into the search space by dividing the feature space of character categories into smaller clusters and derive the centroid of each cluster as a pivot.
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Abstract: This paper proposes a method to accelerate character recognition of a large character set by employing pivots into the search space We divide the feature space of character categories into smaller clusters and derive the centroid of each cluster as a pivot Given an input pattern, it is compared with all the pivots and only a limited number of clusters whose pivots have higher similarities (or smaller distances) to the input pattern are searched for with the result that we can accelerate the recognition speed This is based on the assumption that the search space is a distance space The method has been applied to pre-classification of a practical off-line Japanese character recognizer with the result that the pre-classification time is reduced to 61 % while keeping its pre-classification recognition rate up to 40 candidates as the same as the original 996% and the total recognition time is reduced to 70% of the original time without sacrificing the recognition rate at all If we sacrifice the pre-classification rate from 996% to 977%, then its time is reduced to 35% and the total recognition time is reduced to 515% with recognition rate as 963% from 983%
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Citations
Improving the structuring search space method for accelerating large set character recognition
Yiping Yang,Masaki Nakagawa +1 more
- 26 Oct 2004
TL;DR: Improvements of the "structuring search space " (SSS) method are incorporated into a practical off-line Japanese character recognizer consisting of coarse classification and fine classification with the result that the coarse classification time is reduced to 28.6% and the whole recognition time is reduction to 31.3%.
Camera based mixed-lingual card reader for mobile device
Xi-Ping Luo,Li-Xin Zhen,Gang Peng,Jun Li,Bai-Hua Xiao +4 more
- 31 Aug 2005
TL;DR: This paper introduced the design and implementation of a mixed-lingual business card reader based on built-in camera that has the capability to recognize business cards with Chinese or English characters and proposed some new methods to reduce the resource requirement of the image processing and the Chinese OCR engine.
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Structuring Search Space for Accelerating Large Set Character Recognition
TL;DR: This paper proposes a "structuring search space" (SSS) method aimed to accelerate recognition of large character sets by dividing the feature space of character categories into smaller clusters and derive the centroid of each cluster as a pivot.
A Coarse Classifier Construction Method from a Large Number of Basic Recognizers for On-line Recognition of Handwritten Japanese Characters
Bilan Zhu,Masaki Nakagawa +1 more
- 18 Sep 2011
TL;DR: A method for constructing the most efficient and robust coarse classifier from a large number of basic recognizers which are obtained by different parameters of feature extraction, different discriminant methods or functions, and so on.
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An efficient candidate set size reduction method for coarse-classification in Chinese handwriting recognition
Feng-Jun Guo,Li-Xin Zhen,Yong Ge,Yun Zhang +3 more
- 27 Sep 2006
TL;DR: An efficient clustering based coarse-classifier for a Chinese handwriting recognition system to accelerate the recognition procedure by using a candidate-refining module to reduce the size of the candidate set of the coarse- classifier.
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