基于卷积神经网络集成的手写体孟加拉文数字识别

Rouhan Noor, Kazi Mejbaul Islam, Md. Jakaria Rahimi
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引用次数: 11

摘要

尽管孟加拉语是世界上主要的语言之一,但与其他主要语言相比,关于孟加拉语手写数字识别(BHNR)的研究还不够。现有的方法主要依赖于特征提取和一些较旧的机器学习算法。由于深度神经网络,特别是卷积神经网络(CNN)在机器学习领域的蓬勃发展,在这一领域显示出有希望的结果,并且精度更高。最近的一些研究仅在识别简单数字时显示出很好的准确性,但由于缺乏大型和通用的训练数据集,在具有挑战性的场景中表现不佳。在这项工作中,我们整合了我们最好的CNN模型,即使在最具挑战性的嘈杂条件下,也能以超过96%的高精度识别数字。最初,来自NumtaDB(85000+)的72000+个样本被用于训练,17000+个样本被用作测试数据集。在具有挑战性的场景中,当各种有噪声的训练样本被增强到大约114000个样本的训练数据集时,可以观察到性能的提高。本文还将该模型的性能与其他已有的研究成果进行了比较。这些发现是基于孟加拉手写数字识别计算机视觉挑战赛(2018年)的参赛作品。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Handwritten Bangla Numeral Recognition Using Ensembling of Convolutional Neural Network
Despite being one of the major languages in the world, research regarding Bengali handwritten numeral recognition (BHNR) isn't enough in comparison with the other prominent languages. Existing methods mostly rely on feature extraction and some older machine learning algorithms. Recent bloom in machine learning due to deep neural network especially using Convolutional Neural Network (CNN) showing promising results in this field with better accuracy. Some recent works show very good accuracy only in recognizing plain simple digits but perform poor in challenging scenario because of lack of large and versatile training dataset. In this work, we've ensembled our best performing proposed CNN models to recognize numerals with high degree of accuracy beyond 96% even in most challenging noisy conditions. Initially 72000+ specimens from NumtaDB (85000+) have been used for training and 17000+ specimens have been used as test dataset. The improvement in performance in challenging scenarios has been observed, when various noisy training specimens have been augmented to create a training dataset of size about 114000 specimens. The performance of our proposed model has been compared with other existing works also and presented here. These finding are based on Computer Vision Challenge on Bengali HandWritten Digit Recognition (2018) competition submissions.
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