Italic font recognition using stroke pattern analysis on wavelet decomposed word images

Li Zhang, Yue Lu, C. Tan
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引用次数: 22

Abstract

This work describes an italic font recognition method using stroke pattern analysis on wavelet decomposed word images. The word images are extracted from scanned text documents containing word objects in various fonts and styles. Earlier font recognition methods mainly focus on slanted texture or pattern analysis on single character or large text blocks, which are sensitive to noise and subject to font and style variations such as size, serifness, boldness, etc. Our method takes advantage of 2-D wavelet decomposition on each word image and performs statistical analysis on stroke patterns obtained from wavelet decomposed sub-images. Experiments are carried out with 22,384 frequently used word images in both normal and italic styles of four different fonts. On average, a recognition accuracy of 95.76% for normal style and 96.49% for italic style is achieved. Experiments conducted on word images extracted from scanned documents with scattered italic words also show an encouraging result.
基于小波分解词图像的笔画模式分析的斜体字体识别
本文描述了一种基于笔画模式分析的小波分解词图像斜体识别方法。单词图像是从包含各种字体和样式的单词对象的扫描文本文档中提取的。早期的字体识别方法主要集中在单字或大文本块上的斜体纹理或图案分析,这些方法对噪声比较敏感,而且受字体大小、严肃度、粗体等字体和样式变化的影响。该方法对每个词图像进行二维小波分解,并对小波分解子图像得到的笔画模式进行统计分析。实验以四种不同字体的正常和斜体两种样式的22,384个常用单词图像进行。正常字体的平均识别准确率为95.76%,斜体字体的平均识别准确率为96.49%。对扫描文档中分散斜体字提取的单词图像进行实验也显示出令人鼓舞的结果。
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