2014
DOI: 10.5815/ijigsp.2015.01.02
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An Algorithm for Japanese Character Recognition

Abstract: Abstract-In this paper we propose a geometry-topology based algorithm for Japanese Hiragana character recognition. This algorithm is based on center of gravity identification and is size, translation and rotation invariant. In addition, to the center of gravity, topology based landmarks like conjunction points masking the intersection of closed loops and multiple strokes, as well as end points have been used to compute centers of gravity of these points located in the individual quadrants of the circles enclos… Show more

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Cited by 14 publications
(12 citation statements)
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References 12 publications
(14 reference statements)
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“…A research about feature extraction and classification for X-Ray Medical Image [12] which proposed pertinent feature extraction algorithm for X-ray medical images and determined machine learning methods for automatic X-ray medical image classification. Previous research on Japanese Hiragana character recognition using Euclidean distance [13] obtained 94.1% average accuracy. Other research related to character recognition on Hindi Optical Character Recognition for Printed Documents using KNN [14] and a research about Javanese handwritten character classification [15].…”
Section: Introductionmentioning
confidence: 95%
“…A research about feature extraction and classification for X-Ray Medical Image [12] which proposed pertinent feature extraction algorithm for X-ray medical images and determined machine learning methods for automatic X-ray medical image classification. Previous research on Japanese Hiragana character recognition using Euclidean distance [13] obtained 94.1% average accuracy. Other research related to character recognition on Hindi Optical Character Recognition for Printed Documents using KNN [14] and a research about Javanese handwritten character classification [15].…”
Section: Introductionmentioning
confidence: 95%
“…They obtained the braces wise correspondences between word separators and unary assets in the word segmentation, because of the formulation as a binary quadratic algorithm and estimated the factors with the structured learning method [7]. Soumendu Das [8] explains Japanese Hiragana character recognition based on geometry topology. This algorithm explicit center of gravity identification, conversion and revolution invariant.…”
Section: Feature Extraction Techniques Based On Swarmmentioning
confidence: 99%
“…A geometry-topology based algorithm used to identify the Japanese hiragana characters and performed with an averaged accuracy rate of 94.1% [8]. In the state-of-art recognition, a Deep Convolutional Neural Network achieved an accuracy of 97.20% and 96.87% on CASIA-OLHWDBl.0 and CASIA-OLHWDBl.1 dataset to recognize Chinese handwritten character recognition [9].…”
Section: Sujata Saini Vishal Vermamentioning
confidence: 99%