VashaNet:利用深度卷积神经网络识别手写孟加拉语基本字符的自动化系统

Mirza Raquib , Mohammad Amzad Hossain , Md Khairul Islam , Md Sipon Miah
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引用次数: 0

摘要

由于应用范围广泛,自动字符识别目前非常流行。孟加拉语手写字符识别 (BHCR) 是一个极其困难的问题,这是由其文字的性质决定的。很少有手写字符识别 (HCR) 模型能够准确地对所有不同种类的孟加拉字符进行分类。最近,图像识别、视频分析和自然语言处理都发现卷积神经网络(CNN)能以新颖的方式提取和分类特征,因而取得了巨大成功。本文介绍了用于识别孟加拉语手写基本字符的 VashaNet 模型。建议的 VashaNet 模型采用 26 层深度卷积神经网络(DCNN)架构,包括 9 个卷积层、6 个最大池化层、2 个剔除层、5 个批次归一化层、1 个扁平化层、2 个密集层和 1 个输出层。实验在两个数据集上进行,其中一个数据集包含 5750 幅图像,另一个数据集是 CMATERdb 3.1.2,目的是训练和评估模型。建议的字符识别模型效果非常好,主要数据集的测试准确率为 94.60%,CMATERdb 3.1.2 数据集的测试准确率为 94.43%。这些出色的结果表明,所提出的 VashaNet 优于其他现有方法,并能更好地适用于不同的字符识别任务。所提出的方法是高效实用的自动 BHCR 系统的可行候选方案。建议的方法是开发用于实际环境的自动 BHCR 系统的更强大的候选方法。
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VashaNet: An automated system for recognizing handwritten Bangla basic characters using deep convolutional neural network

Automated character recognition is currently highly popular due to its wide range of applications. Bengali handwritten character recognition (BHCR) is an extremely difficult issue because of the nature of the script. Very few handwritten character recognition (HCR) models are capable of accurately classifying all different sorts of Bangla characters. Recently, image recognition, video analytics, and natural language processing have all found great success using convolutional neural network (CNN) due to its ability to extract and classify features in novel ways. In this paper, we introduce a VashaNet model for recognizing Bangla handwritten basic characters. The suggested VashaNet model employs a 26-layer deep convolutional neural network (DCNN) architecture consisting of nine convolutional layers, six max pooling layers, two dropout layers, five batch normalization layers, one flattening layer, two dense layers, and one output layer. The experiment was performed over 2 datasets consisting of a primary dataset of 5750 images, CMATERdb 3.1.2 for the purpose of training and evaluating the model. The suggested character recognition model worked very well, with test accuracy rates of 94.60% for the primary dataset, 94.43% for CMATERdb 3.1.2 dataset. These remarkable outcomes demonstrate that the proposed VashaNet outperforms other existing methods and offers improved suitability in different character recognition tasks. The proposed approach is a viable candidate for the high efficient practical automatic BHCR system. The proposed approach is a more powerful candidate for the development of an automatic BHCR system for use in practical settings.

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来源期刊
Machine learning with applications
Machine learning with applications Management Science and Operations Research, Artificial Intelligence, Computer Science Applications
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