Literature Study of Convolutional Neural Network Algorithm for Batik Classification

Nardianti Dewi Girsang
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引用次数: 4

Abstract

Batik is a hereditary cultural heritage that has high aesthetic value and deep philosophy. Currently, Indonesian batik has various types of different motifs and patterns, which are spread in Indonesia with their names and meanings. Batik classification uses Convolutional Neural Network as a pattern recognition method, especially batik image classification. The method used is a literature study, looking at studies from several journals regarding the Convolutional Neural Network Algorithm in Classification and providing conclusions about the usefulness of the algorithm. Analysis This literature study analyzes each journal from previous research related to the Convolutional Neural Network Algorithm in classifying Batik. The results of the analysis, conducted a discussion to better know the characteristics and application of Convolutional Neural Network in the classification of Batik. After discussing, this analysis ends with conclusions about the Convolutional Neural Network algorithm in classifying Batik. Based on previous studies, it can be seen that the convolution neural network can work well for image classification with large datasets. By evaluating the method that has been described by considering the architecture and the level of accuracy, namely getting an accuracy level of 100% with an image size of 128 x 128 and regarding the classification of batik, it shows that image size, image quality, image patterns affect the batik classification process.
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蜡染分类中卷积神经网络算法的文献研究
蜡染是一种世袭的文化遗产,具有很高的审美价值和深刻的哲理。目前,印尼蜡染有各种各样不同的图案和图案,这些图案和图案的名称和含义在印尼流传。蜡染分类采用卷积神经网络作为模式识别方法,特别是蜡染图像分类。所使用的方法是文献研究,查看了几本期刊上关于卷积神经网络算法在分类中的研究,并提供了关于该算法有用性的结论。本文献研究分析了前人关于卷积神经网络算法在蜡染分类中的研究。通过对分析结果的分析,对卷积神经网络在蜡染分类中的特点及应用进行了探讨。经过讨论,最后得出了卷积神经网络算法在蜡染分类中的应用。从以往的研究可以看出,卷积神经网络可以很好地用于大数据集的图像分类。通过对所描述的方法进行体系结构和精度水平的评价,即在图像尺寸为128 × 128的情况下,对蜡染分类得到100%的精度水平,说明图像尺寸、图像质量、图像图案对蜡染分类过程的影响。
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