Image Classification On Garutan Batik Using Convolutional Neural Network with Data Augmentation

Leli Fitriani, D. Tresnawati, Muhammad Bagja Sukriyansah
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Abstract

In Indonesia, Batik is one of the cultural assets in the field of textiles with various styles. There are many types of batik in Indonesia, one of which is Batik Garutan. Batik Garutan has different motifs that show the characteristics of Batik Garutan itself. Therefore, to distinguish the features of Batik Garutan from another batik, a system is needed to classify the types of batik patterns. Classification of batik patterns can be done using image classification. In image classification, there are methods to increase the size and quality of the limited training dataset by performing data augmentation. This study aims to obtain an image classification model by applying data augmentation. The image classification process is carried out using the Deep Learning method with the Convolutional Neural Network algorithm, which is expected to be helpful as a reference for research and can be applied to software development related to image classification. This study generated models from several experiments with different epoch parameters and dataset proportions. A system obtained the investigation with the best performance with a data proportion of 9:1, resulting in an accuracy value of 91 percent.
基于卷积神经网络的印染图像分类
在印度尼西亚,蜡染是纺织品领域的文化资产之一,风格各异。印尼的蜡染有很多种,其中一种是蜡染Garutan。蜡染轮轮有不同的图案,显示了蜡染轮轮本身的特点。因此,要区分蜡染Garutan与其他蜡染的特征,就需要一个系统对蜡染图案的类型进行分类。蜡染图案的分类可以用图像分类来完成。在图像分类中,有一些方法可以通过执行数据增强来增加有限训练数据集的大小和质量。本研究旨在通过数据增强获得图像分类模型。图像分类过程采用深度学习方法结合卷积神经网络算法进行,期望对研究有所帮助,并可应用于图像分类相关的软件开发。本研究从几个不同历元参数和数据集比例的实验中生成模型。该系统以9:1的数据比例获得了性能最佳的调查结果,准确度值为91%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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