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- Title
Comparison of Machine Learning Performance Using Naive Bayes and Random Forest Methods to Classify Batik Fabric Patterns.
- Authors
Fadlil, Abdul; Riadi, Imam; Purwadi Putra, Izzan Julda D. E.
- Abstract
Batik is a work of art from Indonesia that has many types and pattern. One of the batik producing areas is Surakarta, the famous pattern in this area are Sawat, Sementrante, and Satriomanah. The problem that arises is the difficulty of distinguishing the three existing pattern because they have a high level of similarity. Therefore, this research aims to solve these problems using NB and RF methods. As a feature extraction, a Gray Level Cooccurrence Matrix is used as a texture feature extraction. The research phase includes methods for dataset collection, preprocessing, feature extraction, and classification. These two methods, RF and NB, can be used as methods for batik fabric classification. The most accurate result obtained by the RF method was 97.91% accurate in dataset A, while the NB method was 96.66% accurate on the same dataset. According to the research results, it is found that the RF method outperforms the NB method in classifying the types of batik patterns.
- Subjects
SURAKARTA (Indonesia); INDONESIA; RANDOM forest algorithms; BATIK; MACHINE performance; MACHINE learning; TEXTILES
- Publication
Revue d'Intelligence Artificielle, 2023, Vol 37, Issue 2, p379
- ISSN
0992-499X
- Publication type
Article
- DOI
10.18280/ria.370214