Aiti: Jurnal Teknologi Informasi
Vol 23 No 1 (2026)

Klasifikasi motif Batik Keraton menggunakan arsitektur fine-tuning ResNet-50

Budhi Santosa, Stefaron (Unknown)
Rachmat Chrismanto , Antonius (Unknown)
Susanto, Budi (Unknown)



Article Info

Publish Date
12 Feb 2026

Abstract

Batik is an Indonesian cultural heritage known for its diverse motifs; however, manual classification of these motifs remains a significant challenge. This study aims to develop a batik motif classification model using the ResNet50 architecture enhanced with data augmentation to improve model accuracy. The dataset consists of four batik motif classes: Kawung, Mega Mendung, Parang, and Truntum. In this research, the model was trained using fine-tuning on ResNet50, with additional CNN layers for feature extraction. The results demonstrated that the proposed model achieved a highest accuracy of 97.80% on test data and 96.80% on validation data, significantly outperforming methods without data augmentation. This study concludes that applying fine-tuned ResNet50 with additional CNN layers and data augmentation effectively classifies batik motifs, offering substantial potential for automating the classification process in the batik industry.

Copyrights © 2026






Journal Info

Abbrev

aiti

Publisher

Subject

Computer Science & IT

Description

AITI: Jurnal Teknologi Informasi is a peer-review journal focusing on information system and technology issues. AITI invites academics and researchers who do original research in information system and technology, including but not limited to: Cryptography Networking Internet of Things Big Data Data ...