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Handwritten isolated Bangla compound character recognition: A new benchmark using a novel deep learning approach

机译:手写孤立的孟加拉语复合字符识别:使用新型深度学习方法的新基准

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摘要

In this work, a novel deep learning technique for the recognition of handwritten Bangla isolated compound character is presented and a new benchmarkof recognition accuracy on the CMATERdb 3.1.3.3 dataset is reported. Greedy layer wise training of Deep Neural Network has helped to make significant strides in various pattern recognition problems. We employ layerwise training to Deep Convolutional Neural Networks (DCNN) in a supervised fashion and augment the training process with the RMSProp algorithm to achieve faster convergence. We compare results with those obtained from standard shallow learning methods with predefined features, as well as standard DCNNs. Supervised layerwise trained DCNNs are found to outperform standard shallow learning models such as Support Vector Machines as well as regular DCNNs of similar architecture by achieving error rate of 9.67% thereby setting a new benchmark on the CMATERdb 3.1.3.3 with recognition accuracy of 90.33%, representing an improvement of nearly 10%. (C) 2017 Elsevier B.V. All rights reserved.
机译:在这项工作中,提出了一种新的深度学习技术,用于识别手写的孟加拉语孤立复合字符,并报告了在CMATERdb 3.1.3.3数据集上的新的识别精度基准。深度神经网络的贪婪分层明智训练有助于在各种模式识别问题上取得重大进展。我们采用监督方式对深度卷积神经网络(DCNN)进行分层训练,并使用RMSProp算法扩大训练过程,以实现更快的收敛。我们将结果与从具有预定义功能的标准浅层学习方法以及标准DCNN中获得的结果进行比较。我们发现,经过监督的分层训练DCNN的错误率达到9.67%,从而优于标准的浅层学习模型(例如支持向量机以及类似架构的常规DCNN),从而在CMATERdb 3.1.3.3上树立了新的基准,识别准确率达到90.33%,增长了近10%。 (C)2017 Elsevier B.V.保留所有权利。

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