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Handwritten Arabic Optical Character Recognition Approach Based on Hybrid Whale Optimization Algorithm With Neighborhood Rough Set

机译:基于混合鲸优化算法与邻域粗糙集的手写阿拉伯光学字符识别方法

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摘要

Accomplishing high recognition performance is considered one of the most important tasks for handwritten Arabic character recognition systems. In general, Optical Character Recognition (OCR) systems are constructed from four phases: pre-processing, feature extraction, feature selection, and classification. Recent literature focused on the selection of appropriate features as a key point towards building a successful and sufficient character recognition system. In this paper, we propose a hybrid machine learning approach that utilizes neighborhood rough sets with a binary whale optimization algorithm to select the most appropriate features for the recognition of handwritten Arabic characters. To validate the proposed approach, we used the CENPARMI dataset, which is a well-known dataset for machine learning experiments involving handwritten Arabic characters. The results show clear advantages of the proposed approach in terms of recognition accuracy, memory footprint, and processor time than those without the features of the proposed method. When comparing the results of the proposed method with other recent state-of-the-art optimization algorithms, the proposed approach outperformed all others in all experiments. Moreover, the proposed approach shows the highest recognition rate with the smallest consumption time compared to deep neural networks such as VGGnet, Resnet, Nasnet, Mobilenet, Inception, and Xception. The proposed approach was also compared with recently published works using the same dataset, which further confirmed the outstanding classification accuracy and time consumption of this approach. The misclassified failure cases were studied and analyzed, which showed that they would likely be confusing for even Arabic natives because the correct interpretation of the characters required the context of their appearance.
机译:实现高识别性能被认为是手写阿拉伯字符识别系统最重要的任务之一。通常,光学字符识别(OCR)系统由四个阶段构成:预处理,特征提取,特征选择和分类。最近的文献专注于选择适当的特征作为建立成功和足够的字符识别系统的关键点。在本文中,我们提出了一种混合机器学习方法,其利用具有二进制鲸级优化算法的邻域粗糙集,以选择用于识别手写阿拉伯字符的最合适的特征。为了验证所提出的方法,我们使用了CENParmi DataSet,该数据集是一个众所周知的数据集,用于涉及手写阿拉伯语字符的机器学习实验。结果表明,在识别准确性,内存足迹和处理器时间方面,所提出的方法明显优点而不是没有所提出的方法的特征。在与其他最近最新的优化算法中提出的方法的结果进行比较时,所提出的方法在所有实验中表现出所有其他方法。此外,与深神经网络相比,所提出的方法显示出最高的识别率,与VGGNet,Reset,NASnet,MobileNet,开始和七脚段等深度神经网络相比。拟议的方法也与最近发布的使用相同数据集进行了比较,这进一步证实了这种方法的出色分类准确性和时间消耗。研究并分析了错误分类的失败病例,表明他们可能会令人困惑甚至阿拉伯语当地人,因为对角色的正确解释需要他们的外表的背景。

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