Multiple Convolutional Neural Network Training for Bangla Handwritten Numeral Recognition

M. Akhand, Mahtab Ahmed, M. Rahman
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引用次数: 10

Abstract

Recognition of handwritten numerals has gained much interest in recent years due to its various application potentials. The progress of handwritten Bangla numeral is well behind Roman, Chinese and Arabic scripts although it is a major language in Indian subcontinent and is the first language of Bangladesh. Handwritten numeral classification is a high-dimensional complex task and existing methods use distinct feature extraction techniques and various classification tools in their recognition schemes. Recently, convolutional neural network (CNN) is found efficient for image classification with its distinct features. In this study, three different CNNs with same architecture are trained with different training sets and combined their decisions for Bangla handwritten numeral recognition. One CNN is trained with ordinary training set prepared from handwritten scan images, and training sets for other two CNNs are prepared with fixed (positive and negative, respectively) rotational angles of original images. The proposed multiple CNN based approach is shown to outperform other existing methods while tested on a popular Bangla benchmark handwritten dataset.
孟加拉文手写数字识别的多重卷积神经网络训练
近年来,手写体数字识别由于具有多种应用潜力而引起了人们的广泛关注。尽管孟加拉数字是印度次大陆的主要语言,也是孟加拉国的第一语言,但其手写数字的进步远远落后于罗马、中国和阿拉伯文字。手写体数字分类是一项高维复杂的任务,现有方法在识别方案中使用了不同的特征提取技术和各种分类工具。近年来,卷积神经网络(convolutional neural network, CNN)以其独特的特点被广泛应用于图像分类。在本研究中,使用不同的训练集训练三个具有相同架构的不同cnn,并结合它们的决策进行孟加拉语手写数字识别。其中一个CNN使用手写扫描图像制备的普通训练集进行训练,另外两个CNN的训练集使用固定的(分别为正负)原始图像旋转角度进行训练。在流行的孟加拉语基准手写数据集上进行测试时,所提出的基于多个CNN的方法优于其他现有方法。
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