TY - CPAPER KW - Authentication KW - Batik KW - Batik Authenticity Classification KW - Batik authenticity classification KW - CNN KW - Classification (of information) KW - Convolution KW - convolutional neural network KW - Convolutional neural networks KW - Crime KW - Deep learning KW - Historic preservation KW - Indonesia KW - Learning algorithms KW - machine learning KW - Machine learning models KW - Machine-learning KW - Neural networks algorithms KW - Transfer learning KW - Transfer learning KW - Transfer learning methods AU - F.A. Putra AU - D.A.C. Jamil AU - B.A. Prabandanu AU - S. Faruq AU - F.A. Pradana AU - R.F. Alya AU - H.A. Santoso AU - F. Al Zami AU - F.O. Saputra AB - Batik is one of Indonesia s cultural heritages that UNESCO has recognized as an Intangible Cultural Heritage, so we should be proud and preserve it. However, there are problems in the batik industry related to the labelling of traditional and modern batik products. The prevalence of fraud in printed batik, which is given a price equivalent to written batik, which is much more expensive, and public ignorance of the aesthetic value and authenticity of written batik, can disrupt the traditional batik industry in Indonesia. Based on these problems, the authors innovate to develop a machine learning model that aims to classify the authenticity of batik using the Convolutional Neural Network Algorithm with Transfer Learning Method. The classification process consists of several stages: collecting datasets, preprocessing data, developing CNN models with transfer learning, and compiling and training models. The development of the machine learning model that has been trained produces an accuracy of 96.91\%. The author hopes that this research can make it easier for people to distinguish between written and printed batik, minimize the existence of batik price fraud, and increase consumer confidence in batik transactions by ensuring the originality of batik products. C2 - Int. Conf. Informatics Comput., ICIC DO - 10.1109/ICIC54025.2021.9632937 LA - English N1 - Journal Abbreviation: Int. Conf. Informatics Comput., ICIC N2 - Batik is one of Indonesia s cultural heritages that UNESCO has recognized as an Intangible Cultural Heritage, so we should be proud and preserve it. However, there are problems in the batik industry related to the labelling of traditional and modern batik products. The prevalence of fraud in printed batik, which is given a price equivalent to written batik, which is much more expensive, and public ignorance of the aesthetic value and authenticity of written batik, can disrupt the traditional batik industry in Indonesia. Based on these problems, the authors innovate to develop a machine learning model that aims to classify the authenticity of batik using the Convolutional Neural Network Algorithm with Transfer Learning Method. The classification process consists of several stages: collecting datasets, preprocessing data, developing CNN models with transfer learning, and compiling and training models. The development of the machine learning model that has been trained produces an accuracy of 96.91\%. The author hopes that this research can make it easier for people to distinguish between written and printed batik, minimize the existence of batik price fraud, and increase consumer confidence in batik transactions by ensuring the originality of batik products. PB - Institute of Electrical and Electronics Engineers Inc. PY - 2021 SN - 9781665421553 (ISBN) TI - Classification of Batik Authenticity Using Convolutional Neural Network Algorithm with Transfer Learning Method UR - https://www.scopus.com/inward/record.uri?eid=2-s2.0-85123708966&doi=10.1109%2fICIC54025.2021.9632937&partnerID=40&md5=a64c9a322e89c87b8eb4be43c070db4c ER -