Ni Wayan Parwati Septiani, Hendy Agung Setiawan, Mei Lestari, Irwan Agus, Rayung Wulan, A. Irawan, Sutrisno
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The Sade village’s economy, which mostly relied on the sales of its fabric production, has been placed under an enormous burden by the COVID-19 pandemic. There must be a new and creative way in order to sustain its market penetration. One possible approach is by linking the community of Sade village fabric producers to the nationwide established marketplace. We propose an ML-based mobile web application that is supposed to be used by ordinary users, not only the tourists who visited Sade village. This mobile web main feature is to do the image classification of the aforementioned motifs and to provide a list of Sade village fabric sellers on the marketplace so that interested users may purchase the product. Models were created using the CNN algorithm to classify batik-sade images. CNN is one frequently used deep learning algorithm for image classification. Image datasets consist of training, testing, and validation datasets. The training datasets contain 2398 photos, while the testing and validation datasets each have 480 data. Ten epochs of experimental data revealed that the suggested CNN model has a training loss of 0.0560 and a training accuracy of 0.9805.","PeriodicalId":256184,"journal":{"name":"2023 International Conference on Computer Science, Information Technology and Engineering (ICCoSITE)","volume":"18 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2023-02-16","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Convolutional Neural Network (CNN) Algorithm for Geometrical Batik Sade’ Motifs\",\"authors\":\"Ni Wayan Parwati Septiani, Hendy Agung Setiawan, Mei Lestari, Irwan Agus, Rayung Wulan, A. Irawan, Sutrisno\",\"doi\":\"10.1109/ICCoSITE57641.2023.10127829\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"In Indonesia, batik was not popular among all socio-economic groups until the 20th century. 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We propose an ML-based mobile web application that is supposed to be used by ordinary users, not only the tourists who visited Sade village. This mobile web main feature is to do the image classification of the aforementioned motifs and to provide a list of Sade village fabric sellers on the marketplace so that interested users may purchase the product. Models were created using the CNN algorithm to classify batik-sade images. CNN is one frequently used deep learning algorithm for image classification. Image datasets consist of training, testing, and validation datasets. The training datasets contain 2398 photos, while the testing and validation datasets each have 480 data. 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引用次数: 0
摘要
在印度尼西亚,直到20世纪,蜡染才在所有社会经济群体中流行起来。最近,蜡染被认为是印尼文化和遗产的重要组成部分。几何蜡染图案是通过它们的对称、水平重复以及形状之间的垂直和对角角来识别的。萨德是位于龙目岛南部的一个村庄。Sade村典型的梭织织物具有与龙目岛中部Sukarara村不同的独特图案。萨德的蜡染大多有几乎相似的几何图案。沙德有5个主题,分别是Selolot, kembang komak, tapok kamalo, ragi genep和batang empat。萨德村的经济主要依赖于面料的销售,新冠肺炎疫情给该村庄带来了巨大的负担。必须有一个新的和创造性的方式来维持它的市场渗透。一种可能的方法是将Sade村的织物生产商社区与全国范围内建立的市场联系起来。我们提出了一个基于ml的移动web应用程序,它应该被普通用户使用,而不仅仅是访问Sade村的游客。这个移动网站的主要功能是对上述图案进行图像分类,并提供市场上萨德村面料卖家的列表,以便感兴趣的用户可以购买产品。使用CNN算法创建模型对蜡染色图像进行分类。CNN是一种常用的深度学习图像分类算法。图像数据集包括训练、测试和验证数据集。训练数据集包含2398张照片,而测试和验证数据集各有480张照片。10个epoch的实验数据表明,本文提出的CNN模型的训练损失为0.0560,训练精度为0.9805。
Convolutional Neural Network (CNN) Algorithm for Geometrical Batik Sade’ Motifs
In Indonesia, batik was not popular among all socio-economic groups until the 20th century. Recently, batik has been considered an essential part of Indonesian culture and heritage. Geometric batik patterns are recognized by their symmetry, horizontal repetition, and vertical and diagonal angles between shapes. Sade is one village located south of Lombok island. Woven fabrics typical of Sade Village have distinctive motifs that differ from those of Sukarara Village, Central Lombok. Sade's batik mostly has geometric patterns that are almost similar. There are 5 motifs in Sade, namely Selolot, kembang komak, tapok kamalo, ragi genep and batang empat. The Sade village’s economy, which mostly relied on the sales of its fabric production, has been placed under an enormous burden by the COVID-19 pandemic. There must be a new and creative way in order to sustain its market penetration. One possible approach is by linking the community of Sade village fabric producers to the nationwide established marketplace. We propose an ML-based mobile web application that is supposed to be used by ordinary users, not only the tourists who visited Sade village. This mobile web main feature is to do the image classification of the aforementioned motifs and to provide a list of Sade village fabric sellers on the marketplace so that interested users may purchase the product. Models were created using the CNN algorithm to classify batik-sade images. CNN is one frequently used deep learning algorithm for image classification. Image datasets consist of training, testing, and validation datasets. The training datasets contain 2398 photos, while the testing and validation datasets each have 480 data. Ten epochs of experimental data revealed that the suggested CNN model has a training loss of 0.0560 and a training accuracy of 0.9805.