2023
DOI: 10.30595/juita.v11i1.16166
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Image Classification On Garutan Batik Using Convolutional Neural Network with Data Augmentation

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… Show more

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“…The fourth study addressed detection in image classification for diabetic retinopathy using a Neural Network with VGGNet-16 architecture, resulting in an accuracy of 93.73% [13]. The fifth study conducted image classification for Garutan batik using CNN and data augmentation, resulting in the highest accuracy of 91.30% with the ResNet-50 architecture [14]. The last study discussed medical image classification for disease diagnosis using a Convolutional Neural Network with VGGNet architecture and achieved an accuracy of 92.3% [15].…”
Section: Introductionmentioning
confidence: 99%
“…The fourth study addressed detection in image classification for diabetic retinopathy using a Neural Network with VGGNet-16 architecture, resulting in an accuracy of 93.73% [13]. The fifth study conducted image classification for Garutan batik using CNN and data augmentation, resulting in the highest accuracy of 91.30% with the ResNet-50 architecture [14]. The last study discussed medical image classification for disease diagnosis using a Convolutional Neural Network with VGGNet architecture and achieved an accuracy of 92.3% [15].…”
Section: Introductionmentioning
confidence: 99%