使用神经网络的离线阿拉伯手写字符

E. Shamsan, Othman Omran Khalifa, Aisha Hassan, H. Hamdan
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引用次数: 2

摘要

字符识别(CR)被认为是模式识别领域中最重要的技术之一。光学字符识别(OCR)系统的最终目标是模拟读取的能力,因此OCR被认为是人工智能。本文开发了一种针对阿拉伯语的字符手写识别系统。该系统的主要目的是节省阿拉伯文OCR的时间和精力。此外,作为打字手册的替代品,使其快捷可靠。该系统有四个主要阶段;预处理,分割,特征提取,分类和识别。该系统是离线的,依赖于图像采集。所以,在无罪释放后,图像必须经过主要阶段。将神经网络用作分类器。该系统能够识别尽可能多的字符,并且具有较高的识别率。此外,它侧重于具有相似性的字符,系统还将考虑点的数量及其位置,以及连接的组件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Off line Arabic handwritten character using neural network
Character Recognition (CR) considered as one of the most important in the field of pattern recognition. The ultimate objectives of the Optical Character Recognition (OCR) system is to simulate the capability of reading, hence the OCR considered as artificial intelligence. In this paper, a character-handwritten recognition for the Arabic language is developed. The main aim of the system is to save time and effort Arabic OCR. In addition, to be the alternative of the typing manual due to provide it fast and reliable. The system has four main stages; preprocessing, segmentation, feature extraction, classification, and recognition. The system is off-line and depends on the image acquisition. So, after acquitted the image has to go through the main stages. The Neural Network used as a classifier. The proposed system is able to recognize as many characters as can with high accuracy rate. In addition, it is focusing on the character that has similarities and the system will also be considered about the number of dots and its position, and the connected components.
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