P. Singh, Shantanu Jana, R. Sarkar, N. Das, M. Nasipuri
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引用次数: 0
摘要
印刷罗马文字的光学字符识别(OCR)仍然是一个活跃的研究领域。自动样式识别(ASI)可以提高OCR系统的性能和关键字识别技术对印刷罗马文字的识别能力。本文提出了一种两阶段字体不变性检测技术,用于印刷罗马文字的斜体、粗体、下划线、正体和所有大写字体的检测。在第一阶段,该技术将带下划线的单词与不带下划线的单词分开。在第二阶段,从未加下划线的单词中提取25个元素的特征集,以识别使用多个分类器评估的其他所述样式单词。这项技术已经在用Arial、Cambria、Calibri、Gill Sans和Times New Roman五种著名字体印刷的2100个单词上进行了测试,每种字体大约贡献420个单词。基于多个分类器的识别精度,选择多层感知器(multilayer Perceptron, MLP)分类器作为最终分类器,采用不同的折叠和不同的epoch数进行了综合测试。采用三重交叉验证方案,系统的总体准确率为98.25%。
A two-stage style detection approach for printed Roman script words
Development of Optical Character Recognition (OCR) for printed Roman script is still an active area of research. Automatic Style Identification (ASI) can be used to improve the performance of OCR system and keyword spotting techniques for printed Roman script. This paper proposes a two stage font invariant technique for detection of italic, bold, underlined, normal and all capital styled words for printed Roman script. In the first stage, the technique separates the underlined words from non-underlined words. In the second stage, a 25-element feature set has been extracted from the non-underlined words to identify the other said styled words which are evaluated using multiple classifiers. The technique has been tested on 2100 words printed in five well-known fonts namely, Arial, Cambria, Calibri, Gill Sans, and Times New Roman in which each of the font contributes exactly about 420 words. Based on the identification accuracies of multiple classifiers, Multi Layer Perceptron (MLP) classifier has been chosen as the final classifier which was tested comprehensively using different folds and with different number of epochs. Overall accuracy of the system is found to be 98.25% using 3-fold cross validation scheme.