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Bangla Handwritten Character Recognition using Convolutional Neural Network with Data Augmentation

机译:BANGLA使用卷积神经网络具有数据增强的手写字符识别

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This paper proposes a process of Handwritten Character Recognition to recognize and convert images of individual Bangla handwritten characters into electronically editable format, which will create opportunities for further research and can also have various practical applications. The dataset used in this experiment is the BanglaLekha-Isolated dataset [1]. Using Convolutional Neural Network, this model achieves 91.81% accuracy on the alphabets (50 character classes) on the base dataset, and after expanding the number of images to 200,000 using data augmentation, the accuracy achieved on the test set is 95.25%. The model was hosted on a web server for the ease of testing and interaction with the model. Furthermore, a comparison with other machine learning approaches is presented.
机译:本文提出了手写字符识别的过程,以识别和将个别Bangla手写字符的图像转换为电子可编辑格式,这将为进一步研究创造机会,并且还可以具有各种实际应用。本实验中使用的数据集是Banglalekha-odustd DataSet [1]。使用卷积神经网络,该模型在基础数据集上的字母(50个字符类别)上实现了91.81%的精度,并且在使用数据增强将图像数量扩展到200,000后,测试集上实现的精度为95.25%。该模型托管在Web服务器上,以便于与模型进行测试和交互。此外,呈现与其他机器学习方法的比较。

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