Handwritten Devanagari Digits Recognition Using Residual Neural Network

Bandyopadhyay Shaon
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Abstract

Handwritten digit recognition is a highly evolved research domain of pattern recognition. It is used to classify pre-segmented handwritten digits. The Devanagari script is one of the writing systems of various Indian languages including Sanskrit and Hindi. In this paper, an efficient Handwritten Devanagari numeral digit recognition using ResNet is proposed. Deep learning is a recent research trend in this field. Architectures like Residual neural Networks (ResNet) are being used. ResNet is an architecture that is computationally expensive and normally used to provide high accuracy in classification problems. The structural design of the network consists of sacks of two convolutional (Conv2D) layers with Batch Normalization and an activation function called Relu. We evaluated our scheme on 16000 handwritten samples of Devanagari numerals from the UCI machine learning database and from the experiment we have achieved 99.40% recognition rate.
基于残差神经网络的手写德文数字识别
手写体数字识别是模式识别中一个高度发展的研究领域。它用于对预分割的手写数字进行分类。Devanagari文字是包括梵语和印地语在内的各种印度语言的书写系统之一。本文提出了一种基于ResNet的高效手写体德文数字识别方法。深度学习是该领域的最新研究趋势。残差神经网络(ResNet)等架构正在被使用。ResNet是一种计算成本很高的体系结构,通常用于在分类问题中提供高精度。网络的结构设计由两个卷积(Conv2D)层组成,具有批处理归一化和一个称为Relu的激活函数。我们对来自UCI机器学习数据库的16000个Devanagari数字手写样本进行了评估,从实验中我们达到了99.40%的识别率。
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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