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A Bio-inspired Moth-Flame Optimization Algorithm for Arabic Handwritten Letter Recognition

机译:一种生物启发蛾火焰优化算法,用于阿拉伯语手写信识别

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Arabic handwritten letter recognition (AHLR) is a challenging field in pattern recognition due to the different font styles, size, and noises. The font style is changed according to several criteria such as human skills, age, and culture. So, till now there is no such a system with sufficient accuracy. In the current paper, a new approach is introduced based on Moth-flame optimization (MFO) for AHLR, called (MFO-AHLR). The main goal of the proposed approach is to improve the accuracy of AHLR with a least number of features. MFO-AHLR consists of the following phases: pre-processing (including binarization and noise removal), feature extraction (including several kinds of features) and classification (which are kNN, RF, and LDA in this work). Between feature selection and classification, we adopt MFO as a feature selector. A benchmark dataset for Arabic handwritten letter images (CENPARMI) was used. The achieved results showed superior results for the selected features in all experiments. Also, for all classifiers, the selected feature sets outperformed the non-selected features; and the processing time was improved. The MFO-AHLR achieved 99.25% of classification accuracy which is the highest among the other published works. To the best of our knowledge, there is no AHLR achieved it.
机译:阿拉伯语手写信函识别(AHLR)是由于不同字体样式,大小和噪音的模式识别的具有挑战性的领域。字体样式根据若干标准而改变,例如人类技能,年龄和文化。所以,到目前为止,没有这样的系统具有足够的精度。在本文中,基于AHLR的蛾火焰优化(MFO)引入了一种新方法,称为(MFO-AHLR)。该方法的主要目标是提高AHLR的准确性,具有最少的特征。 MFO-AHLR由以下阶段组成:预处理(包括二值化和噪音),功能提取(包括几种特征)和分类(这是Knn,RF和LDA)。在特征选择和分类之间,我们采用MFO作为特征选择器。使用了阿拉伯手写字母图像(CENParmi)的基准数据集。所达到的结果显示出所有实验中所选特征的优异结果。此外,对于所有分类器,所选功能集优于非所选功能;并且处理时间得到改善。 MFO-AHLR达到了99.25 %的分类准确性,这是另一个公布的作品中最高的。据我们所知,没有AHLR实现它。

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