英文OCR字体样式分类系统

V. Bharath, N. Rani
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引用次数: 22

摘要

光学技术(如OCR)的倾向在于以最佳或更低的计算复杂度实现更高的识别率。目前已有光学技术可以实现从文档图像中读取文本的自动化,其准确率几乎接近100%。特别是,罗马语言OCR能够识别不同大小的不同字体样式,因此在产生更高的准确性方面足够可靠和健壮。然而,对于字体样式/大小无关的OCR的一个主要方面是它的计算复杂性。通过独立于字体样式/大小的OCR来减少字符识别过程中涉及的计算复杂性是一个重要的问题。本文提出了一种基于字符图像的字体样式分类技术,利用字符图像的左、右、对角线方向的距离轮廓特征进行字体样式分类。这项工作的主要目的是通过字体样式识别来降低通用OCR系统的复杂性。将字符图像的距离轮廓特征输入到支持向量机分类器中。为了进行实验,训练数据集由大约10种广泛使用的大写字母和小写字母字体样式组成。测试是用从包含5种不同字体样式的各种不可编辑文档源中提取的字符图像进行的。结果表明,该算法的性能令人满意,准确率达到80%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A font style classification system for English OCR
The inclination of optical technologies like OCR lies in achieving higher recognition rates with optimal or reduced computational complexities. At present there exist optical technologies for automation of reading the text from document images with almost nearing to 100% accuracy. Especially, the Roman language OCR's are reliable and robust enough in producing higher accuracies by being able to recognize varying font styles of varying sizes. However for the font style/ size independent OCR's one of the main aspect is its computational complexity. It is significant concern to reduce the computational complexities involved in the process of character recognition through a font style / size independent OCR. In this paper, a technique for classification of the font style based on character image is proposed by employing the distance profile features with respect to left, right and diagonal directions of a character image. The major objective of this work is to reduce the complexity of the generic OCR systems by font style recognition. The distance profile features of character images are fed to a support vector machine classifier. For experimentation, the training data sets are comprised of around 10 widely used font styles of upper case letters as well as lower case letters. The testing is conducted with the character images that are extracted from various non editable document sources comprising of 5 different font styles. The performance of algorithm is found to be satisfactory with an accuracy of 80%.
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