Offline Handwritten MODI Character Recognition Using GoogLeNet and AlexNet

Savitri Chandure, V. Inamdar
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Abstract

“MODI lipi” is one of the scripts used to write religious scriptures of Maharashtra in Western India and it was also the official script for the Maratha administration from the 17th century to the middle of the 20th century. This cultural treasure, “MODI-manuscript,” speaks about the history of its time. Although it has immense importance as a source of inspiration and information to the present generation, very few people know this “lipi”. The field of Handwritten Character Recognition offers a scope to develop a recognition system for MODI to make it easy to learn. However its structural characteristics demand a special approach. Deep Convolutional Neural Networks (DCNN) has shown their remarkable potential in distinct feature extraction and classification of characters. So, in this paper we are focusing primarily on the performance evaluation of DCNN and their comparative study for MODI handwritten character recognition. Networks are evaluated based on trainable parameters, training time and memory consumption. Later, the tuned networks are also tested for transformed MODI dataset. The result shows the effectiveness of deep learning approach on Handwritten MODI character recognition.
离线手写莫迪字符识别使用GoogLeNet和AlexNet
“MODI lipi”是西印度马哈拉施特拉邦用于书写宗教经文的文字之一,也是17世纪至20世纪中叶马拉地政府的官方文字。这一文化瑰宝“莫迪手稿”讲述了那个时代的历史。虽然它作为灵感和信息的来源对当代人有着巨大的重要性,但很少有人知道这个“lipi”。手写体字符识别领域为MODI提供了开发识别系统的空间,使其易于学习。然而,它的结构特点需要一个特殊的方法。深度卷积神经网络(Deep Convolutional Neural Networks, DCNN)在特征提取和字符分类方面显示出了巨大的潜力。因此,在本文中,我们主要关注DCNN的性能评估以及它们在MODI手写体字符识别中的比较研究。基于可训练参数、训练时间和内存消耗对网络进行评估。随后,对调整后的网络进行了转换后的MODI数据集测试。结果表明了深度学习方法在手写体莫迪字符识别中的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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