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Proposed method to Malayalam Handwritten Character Recognition using Residual Network enhanced by multi-scaled features

机译:利用残差网络增强多尺度特征的马拉雅拉姆语手写字符识别方法

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摘要

Handwritten character recognition demands great importance in the field of bank cheque processing, tax returns, etc. Deep learning techniques for recognition of handwritten characters have surpassed the traditional techniques involving handcrafted feature extraction. Although it achieves around 0.95 recognition rate, some misclassification does exist. This is because the classifier function at the output layer performs classification that does not consider the parameter adjustments using the low and mid-level features. This paper proposes an efficient method of recognition of handwritten Malayalam characters, including compound characters and signs, using deep layered graph neural network, Residual network enhanced by multi-scaled features from lower and middle layers.
机译:手写字符识别在银行支票处理,纳税申报表等领域中非常重要。用于识别手写字符的深度学习技术已经超越了涉及手工特征提取的传统技术。尽管它达到约0.95的识别率,但确实存在一些错误分类。这是因为在输出层的分类器功能执行的分类不考虑使用低级和中级功能的参数调整。本文提出了一种有效的识别马拉雅拉姆语手写字符(包括复合字符和符号)的有效方法,该方法使用深层图神经网络,由中下层的多尺度特征增强的残差网络。

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