基于多特征和KNN分类器的阿拉伯(印度)手写体数字识别

A. Hassan
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引用次数: 7

摘要

本文提出了一种结合上下轮廓、垂直水平投影和标准差σi离散余弦变换(DCT)等多种特征提取方法的阿拉伯(印度)手写体数字识别系统。将图像分成若干块后提取这些特征。KNN分类器用于分类。这项工作是用ADBase标准数据库(阿拉伯数字)进行测试的,该数据库由700个不同的作者编写的70,000个数字组成。该系统在训练阶段使用60000位数字图像,在测试阶段使用10000位数字图像。该工作的识别准确率达到97.32%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Arabic (Indian) Handwritten Digits Recognition Using Multi feature and KNN Classifier
This paper presents an Arabic (Indian) handwritten digit recognition system based on combining multi feature extraction methods, such a upper_lower profile, Vertical _ Horizontal projection and Discrete Cosine Transform (DCT) with Standard Deviation σi called (DCT_SD) methods. These features are extracted from the image after dividing it by several blocks. KNN classifier used for classification purpose. This work is tested with the ADBase standard database (Arabic numerals), which consist of 70,000 digits were 700 different writers write it. In proposing system used 60000 digits, images for training phase and 10000 digits, images in testing phase. This work achieved 97.32% recognition Accuracy.
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