2014
DOI: 10.12785/amis/080540
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Chinese-Chess Image Recognition by using Feature Comparison Techniques

Abstract: Abstract:In this paper, we develop a feature comparison method for the Chinese-chess object by using the features comparison based on input image and database. Features are generated by calculating the distance between the contour of the character and the centre of the chess object. In this paper, the noise filter, object extraction, normalization, feature calculation (FC) and maximum energy slop (MES) method are used to achieve robust Chinese-chess recognition. There are two advantages when compared with othe… Show more

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Cited by 4 publications
(1 citation statement)
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References 15 publications
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“…Chinese chess has various font types and various characters. Wen [21] proposed an input image and database feature comparison method that consists of the noise filter, object extraction, normalization, feature calculation of the distance between the contour of the character and the center of the chessman, and maximum energy slop algorithm, for the Chinese chessmen. Seniman et al [22] presented the backpropagation algorithm of a feed-forward neural network as well as direction feature extraction method by iterating and calculating the directions surrounding each pixel in the image to obtain the features and recognize Chinese chess characters.…”
Section: Introductionmentioning
confidence: 99%
“…Chinese chess has various font types and various characters. Wen [21] proposed an input image and database feature comparison method that consists of the noise filter, object extraction, normalization, feature calculation of the distance between the contour of the character and the center of the chessman, and maximum energy slop algorithm, for the Chinese chessmen. Seniman et al [22] presented the backpropagation algorithm of a feed-forward neural network as well as direction feature extraction method by iterating and calculating the directions surrounding each pixel in the image to obtain the features and recognize Chinese chess characters.…”
Section: Introductionmentioning
confidence: 99%