S. Shastry, G. Gunasheela, T. Dutt, D. S. Vinay, S. R. Rupanagudi
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引用次数: 20
摘要
计算机视觉、人工智能和模式识别在电子和图像处理的历史上一直是重要的研究领域。光学字符识别(OCR)是计算机视觉的一个主要方面,自诞生以来已经有了很大的发展。OCR是一种从数字化获得的光学数据中识别可读字符的方法。为此目的,使用不同的方法开发了许多方法和算法。在这里,我们提出了一种名为“i”的OCR方法。在所有其他可用的OCR系统中,“i”旨在基于独特的片段提取技术实现高速,简单,字体无关和大小无关的OCR系统。该算法可作为完整OCR解系统中单个字母检测的内核,无需任何复杂的数学运算。该方法的亮点在于,它不使用任何图像矩阵库或数据库来识别字母,而是使用一种独特的算法来识别字母。该算法在MATLAB 7.14.0.739 build R2012a中对500张文本图像的测试集进行了实现,对Arial、Times New Roman和chchas三种字体族的准确率达到100%。
“i” — A novel algorithm for optical character recognition (OCR)
Computer vision, artificial intelligence and pattern recognition have been important areas of research for a while in the history of electronics and image processing. Optical character recognition (OCR) is one of the main aspects of computer vision and has evolved greatly since its inception. OCR is a method in which readable characters are recognized from optical data obtained digitally. Many methodologies and algorithms have been developed for this purpose using different approaches. Here we present one such approach for OCR named “ i ”. Amongst all other OCR systems available, “ i ” aims at a high speed, simple, font independent and size independent OCR system based on a unique segment extraction technique. This algorithm can be used as a kernel for single alphabet detection within a complete OCR solution system without the need for any complex mathematical operations. The highlight of this methodology is that, it does not use any libraries or databases of image matrices to recognize alphabets, but it has a unique algorithm to recognize alphabets instead. This algorithm has been implemented in MATLAB 7.14.0.739 build R2012a on a test set of 500 images of text and an accuracy of 100% for three font families namely Arial, Times New Roman and cchas been obtained.