基于不同卷积神经网络模型的库尔德塞特手写数字识别

TEM Journal Pub Date : 2024-02-27 DOI:10.18421/tem131-23
Sardar Hasen Ali, M. Abdulrazzaq
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引用次数: 0

摘要

手写数字识别引起了模式识别领域研究人员的极大兴趣。这种兴趣源于手写数字识别在各种现实生活应用中的相关性,包括阅读财务支票和官方文件,而这一直是手写数字识别的障碍。为了应对这一挑战,研究人员开发了许多算法,重点识别不同人类语言的手写数字。本文介绍了一个新的库尔德手写数据集,该数据集由库尔德字符、数字、文本和符号组成。该数据集由 1560 名参与者组成,涵盖了广泛而多样的群体。它是训练和评估库尔德语数字识别算法的主要数据集。我们使用库尔德语数据集(KurdSet)和阿拉伯语数据集进行手写识别,其中阿拉伯语数据集包含 700 名不同参与者书写的 70,000 张阿拉伯语数字图像。此外,研究中还使用了各种模型,包括 ResNet50、DenseNet121、MobileNet 和自定义 CNN(卷积神经网络)。此外,模型的有效性还通过测试准确率来评估,测试准确率是指在评估阶段正确分类数字的百分比。ResNet50 也表现出色,测试准确率达到 99.67%,表明其所有模型都表现出色,而 DenseNet121 和自定义 CNN 模型的测试准确率最高,达到 99.73%,凸显了其在捕捉相关特征方面的卓越性能。尽管准确率较低,MobileNet 仍然表现出良好的识别能力,测试准确率为 99.54%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
KurdSet Handwritten Digits Recognition Based on Different Convolutional Neural Networks Models
Recognition of handwritten digits has garnered significant interest among researchers in the domain of recognizing pattern. This interest stems from the recognition's relevance in various real-life applications, including reading financial checks and official documents, which has remained a persistent obstacle. To address this challenge, researchers have developed numerous algorithms focusing on recognizing handwritten digits across different human languages. This paper presents a new Kurdish Handwritten dataset, consisting of Kurdish characters, digits, texts, and symbols. The dataset consists of 1560 participants, encompassing a broad and varied group. It serves as the primary dataset for training and evaluating algorithms in Kurdish digit recognition. We used Kurdish dataset named (KurdSet) and Arabic dataset for handwritten recognition, which holds 70,000 images of Arabic digits that were written by 700 various participants. Additionally, various models are utilized in the study, including ResNet50, DenseNet121, MobileNet, and a custom CNN (convolutional neural network). Additionally, the models' effectiveness was assessed through the examination of test accuracy, which measures the percentage of correctly classified digits in the evaluation phase. ResNet50 also performs exceptionally well that achieved test accuracy 99.67%, indicating its All models exhibit good performance, DenseNet121 and the Custom CNN Model demonstrate the highest test accuracy of 99.73%, highlighting their superior performance. capabilities in capturing relevant features. Despite its accuracy, MobileNet still exhibits good recognition capability with a test accuracy 99.54%.
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