Implementation of Deep Learning for Handwriting Imagery of Sundanese Script Using Convolutional Neural Network Algorithm (CNN)

Arif Purnama, S. Bahri, Gunawan Gunawan, Taufik Hidayatulloh, Satia Suhada
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引用次数: 1

Abstract

Aksara Sunda becomes one of the cultures of sundanese land that needs to be preserved. Currently, not all people know Aksara Sunda because of the shift in cultural values and there is a presumption that Aksara Sunda is difficult to learn because it has a unique and complicated shape. The use of deep learning has been widely used, especially in the field of computer vision to classify images, one of the commonly used algorithms is the Convolutional Neural Network (CNN). The application of The Convolutional Neural Network (CNN) algorithm on sundanese handwriting imagery can make it easier for people to learn Sundanese script, this study aims to find out how accurate the neural network convolutional algorithm is in classifying Aksara Sunda imagery. Data collection techniques are done by distributing questionnaires to respondents. System testing using accuracy tests, testing on CNN models using data testing get 97.5% accuracy and model testing using applications get 98% accuracy. So based on the results of the trial, the implementation of deep learning methods using neural network convolution algorithms was able to classify the handwriting image of Aksara Sunda well.
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使用卷积神经网络算法(CNN)实现巽他语手写体图像的深度学习
Aksara Sunda成为需要保护的sundanese土地文化之一。目前,由于文化价值观的转变,并不是所有人都知道阿克萨拉巽他语,而且有一种假设认为阿克萨拉巽达语很难学习,因为它有一个独特而复杂的形状。深度学习的应用已经得到了广泛的应用,特别是在计算机视觉领域对图像进行分类,其中一种常用的算法是卷积神经网络(CNN)。卷积神经网络(CNN)算法在巽他语手写图像上的应用可以使人们更容易地学习巽他文,本研究旨在了解神经网络卷积算法在Aksara Sunda图像分类中的准确性。数据收集技术是通过向受访者分发问卷来完成的。使用准确性测试的系统测试、使用数据测试的CNN模型测试获得97.5%的准确性,使用应用程序的模型测试获得98%的准确性。因此,基于试验结果,使用神经网络卷积算法实现的深度学习方法能够很好地对Aksara Sunda的手写图像进行分类。
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