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Extraction of Sequence from Bangla Handwritten Numerals and Recognition Using LSTM

机译:从孟加拉语手写数字中提取序列并使用LSTM进行识别

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In the promising era of Handwritten Numeral Recognition (HNR), despite Bangla being one of the major languages in the Indian subcontinent, fewer explorations have been done on Bangla numerals compared to other languages. Among the existing methods, several convolutional neural network (CNN) based method outperformed other methods. But CNN always gets confused with some specific Bangla numerals due to the similarity of shape and size of different numerals. The main purpose of this study is to expand Bangla HNR by considering a novel methodology with a Long Short-Term Memory (LSTM) network. In the proposed method, images are thinned and a sequence is extracted. These extracted sequences are used to classify using LSTM network. Both single-layer LSTM and Deep LSTM models are trained and performance tested on a benchmark dataset with a large number of samples. On the other hand, traditional CNN is also trained for better understanding. Experimental outcomes revealed that the proposed LSTM based method outperformed CNN with remarkable accuracy for the similar shaped numerals. Finally, the proposed method achieved a test set recognition rate of 98.03% which is better than or competitive to other prominent existing methods.
机译:在充满希望的手写数字识别(HNR)时代,尽管孟加拉语是印度次大陆的主要语言之一,但与其他语言相比,对孟加拉语数字的探索较少。在现有方法中,几种基于卷积神经网络(CNN)的方法优于其他方法。但是,由于不同数字的形状和大小相似,CNN总是与某些特定的孟加拉数字混淆。这项研究的主要目的是通过考虑使用长短期记忆(LSTM)网络的新方法来扩展Bangla HNR。在提出的方法中,图像被细化并提取序列。这些提取的序列用于使用LSTM网络进行分类。单层LSTM和Deep LSTM模型均经过训练,并在包含大量样本的基准数据集上进行了性能测试。另一方面,还对传统的CNN进行了培训,以使他们更好地理解。实验结果表明,对于相似形状的数字,基于LSTM的建议方法以显着的精度优于CNN。最终,该方法实现了98.03%的测试集识别率,优于或优于其他突出的现有方法。

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