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Handwritten Bangla Character Recognition Using the State-of-the-Art Deep Convolutional Neural Networks

机译:使用最先进的深度卷积神经网络进行手写Bangla字符识别

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摘要

In spite of advances in object recognition technology, handwritten Bangla character recognition (HBCR) remains largely unsolved due to the presence of many ambiguous handwritten characters and excessively cursive Bangla handwritings. Even many advanced existing methods do not lead to satisfactory performance in practice that related to HBCR. In this paper, a set of the state-of-the-art deep convolutional neural networks (DCNNs) is discussed and their performance on the application of HBCR is systematically evaluated. The main advantage of DCNN approaches is that they can extract discriminative features from raw data and represent them with a high degree of invariance to object distortions. The experimental results show the superior performance of DCNN models compared with the other popular object recognition approaches, which implies DCNN can be a good candidate for building an automatic HBCR system for practical applications.
机译:尽管对象识别技术取得了进步,但由于存在许多模棱两可的手写字符和过分草书的Bangla手写,手写Bangla字符识别(HBCR)仍未解决。即使是许多现有的先进方法,也无法在实践中获得与HBCR相关的令人满意的性能。本文讨论了一组最新的深度卷积神经网络(DCNN),并系统地评估了它们在HBCR应用中的性能。 DCNN方法的主要优势在于,它们可以从原始数据中提取出可区分的特征,并以高度不变的方式表示它们,从而不失真。实验结果表明,与其他流行的对象识别方法相比,DCNN模型具有优越的性能,这表明DCNN可以成为构建实用HBCR自动系统的理想选择。

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