Malayalam Handwritten Character Recognition using Transfer Learning and Fine Tuning of Deep Convolutional Neural Networks

Pearlsy P V, D. Sankar
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Abstract

In the digitization of Malayalam handwritten documents, recognition of handwritten characters is a difficult task. This is due to the non availability of a labeled benchmark Malayalam handwritten character dataset. The state of the art technique using deep convolutional neural networks demands large amount of labeled dataset. Therefore, this paper aims to develop a pre-trained convolutional neural network (CNN) model for recognizing Malayalam handwritten characters using small sized dataset. Two approaches namely transfer learning and fine tuning of pre-trained Deep Convolutional Neural Network (DCNN) architecture ResNet50 are used to develop models for recognizing Malayalam handwritten characters. Model design is optimized by varying parameters like learning rate, batch size and optimization algorithm. From the experiments, it is found that highest testing accuracy of 78.05% is obtained for the model using fine tuning approach when it is trained with a batch size of 16 using RMSProp optimization algorithm and a learning rate of 0.000001. A testing accuracy of 78.05% is obtained with ResNet50 for binary images even though ResNet50 is pre-trained using colour images.
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使用迁移学习和深度卷积神经网络微调的马拉雅拉姆手写字符识别
在马拉雅拉姆语手写体文档数字化过程中,手写体字符的识别是一个难点。这是由于没有标记的基准马拉雅拉姆手写字符数据集。使用深度卷积神经网络的最新技术需要大量的标记数据集。因此,本文旨在开发一个预训练卷积神经网络(CNN)模型,用于使用小型数据集识别马拉雅拉姆语手写字符。采用迁移学习和预训练深度卷积神经网络(DCNN)架构ResNet50的微调两种方法来开发马来亚拉姆语手写字符识别模型。模型设计通过学习率、批处理大小和优化算法等参数进行优化。实验发现,当使用RMSProp优化算法以16个批大小训练模型,学习率为0.000001时,采用微调方法的模型测试准确率最高,达到78.05%。尽管ResNet50是使用彩色图像进行预训练的,但ResNet50对二值图像的测试准确率为78.05%。
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