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BESAC: Binary External Symmetry Axis Constellation for unconstrained handwritten character recognition

机译:BESAC:二进制外部对称轴星座图,用于无限制手写字符识别

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We propose a novel perception driven feature extraction called binary external symmetry axis constellation (BESAC) and a fast Boolean matching character recognition technique. A constellation model using a set of external symmetry axes which are perceptually significant can uniquely represent a handwritten character pattern. This model generates two histograms of orientations that are binary coded and con-catenated to produce the proposed BESAC feature. A two stage classification strategy is adopted where a parallel Hamming Distance dissimilarity matching is performed on the extracted BESAC feature to achieve fast recognition along with perceptual closure part detection on look-alike characters. We adopt a 10-fold cross validation strategy to evaluate the performance of our algorithm on two major Indian languages, Bangla and Odia with four benchmark databases (ISI Kolkata Bangla numeral, ISI Kolkata Odia and IITBBS Odia numeral, and a newly created IITBBS Odia character database). The average time for classifying an unknown handwritten character is reported to be significantly less than the existing methods. The average recognition accuracy using the proposed approach is proved to outperform the state-of-the-art accuracy results on ISI Kolkata Odia numeral database (99.35%), IITBBS Odia numeral (98.9%), ISI Kolkata Bangla numeral database (99.48%) and IITBBS Odia character (95.01%) database. (C) 2016 Elsevier B.V. All rights reserved.
机译:我们提出了一种新颖的感知驱动特征提取,称为二进制外部对称轴星座图(BESAC)和快速布尔匹配字符识别技术。使用一组在视觉上有意义的外部对称轴的星座模型可以唯一地表示手写字符模式。该模型生成两个方向的直方图,这些直方图经过二进制编码和级联以生成建议的BESAC功能。采用两阶段分类策略,其中对提取的BESAC特征执行并行汉明距离不相似匹配,以实现快速识别以及对相似字符的感知闭合部分检测。我们采用10倍交叉验证策略,使用四个基准数据库(ISI加尔各答Bangla数字,ISI加尔各答Odia和IITBBS Odia数字以及新创建的IITBBS Odia字符)评估我们的算法在两种主要印度语言(孟加拉语和奥迪亚语)上的性能。数据库)。据报告,对未知手写字符进行分类的平均时间明显少于现有方法。在ISI加尔各答Odia数字数据库(99.35%),IITBBS Odia数字(98.9%),ISI Kolkata Bangla数字数据库(99.48%)上,证明了所提出方法的平均识别精度优于最新的精度结果和IITBBS Odia字符(95.01%)数据库。 (C)2016 Elsevier B.V.保留所有权利。

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