基于卷积神经网络的楠榜文字识别

Panji Bintoro, A. Harjoko
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引用次数: 0

摘要

楠榜语是楠榜语中常用的文字。南榜语本身由南榜本地人和学习南榜语的人使用。楠榜文字很难学,因为有很多父字符和子字母的组合。CNN是物体识别领域的一种方法,它有一个特定的层,即卷积层和池化层,可以很好地进行特征学习过程。手写识别与MNIST中的字符识别一样,CNN比其他方法产生更好的性能。从CNN的优点出发,选择了DenseNet架构的CNN方法作为识别各个楠榜文字的最佳架构。在本研究中,主要有两个过程,即预处理和识别。本研究成功应用CNN方法对楠榜文字进行识别。该数据集被分为4组具有不同发音的字符。首先,父字符数据准确率达到98%。其次,具有上述字母的父字母数据准确率达到98%。第三,带有子字母的父字符数据获得98%的准确率。第四,母字母与下字母数据的准确率达到97%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Lampung Script Recognition Using Convolutional Neural Network
The Lampung script is often used in writing words in Lampung language. The Lampung language itself is used by native Lampung people and people who learn Lampung language. The Lampung script is difficult to learn because there are many combinations of parent characters and subletters. CNN is a method in the field of object recognition that has a specific layer, namely a convolution layer and a pooling layer that allows the feature learning process well. Handwriting recognition as in character recognition in MNIST, CNN produces better performance compared to other methods. From the advantages of CNN, the CNN method with DenseNet architecture was chosen as the best architecture to recognize each Lampung script. In this study, there are 2 main processes, namely preprocessing, and recognition. This study succeeded in applying the CNN method which can recognize Lampung script. The dataset is divided into 4 groups of characters that have different sounds. First, the parent character data get 98% accuracy. Second, the parent letter data with the above letters get 98% accuracy. Third, the parent character data with the sub-letters on the side get 98% accuracy. Fourth, the parent letter data with the lower letters get 97% accuracy.
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