Image Batik Classification Based using Ensemble Learning
Abstract
Full Text:
PDFReferences
Elliott I M, 2013 Batik: fabled cloth of Java Tuttle Publishing.
Haake A, 1989 The role of symmetry in Javanese batik patterns Computers & Mathematics with
Applications 17, 4 p. 815–826.
Stephenson N, 1993 The Past, Present, And Future Of Javanese Batik: A Bibliographic Essay
Art Documentation: Journal Of The Art Libraries Society Of North America 12, 3 p. 107–
Swallow D, 1987 Javanese batiks: Meaning, intepretation and change Indonesia Circle 15, 42 p.
–55.
Haake A, Jan. 1989 The role of symmetry in Javanese batik patterns Symmetry 2 17, 4 p. 815–
Suciati N Pratomo W A and Purwitasari D, 2014 Batik Motif Classification Using Color- Texture-Based Feature Extraction and Backpropagation Neural Network in 2014 IIAI 3rd International Conference on Advanced Applied Informatics p. 517–521.
Minarno A E Munarko Y Kurniawardhani A Bimantoro F and Suciati N, 2014 Texture feature extraction using co-occurrence matrices of sub-band image for batik image classification in Information and Communication Technology (ICoICT), 2014 2nd International Conference on p. 249–254.
Nurhaida I Noviyanto A Manurung R and Arymurthy A M, 2015 Automatic Indonesian’s batik
pattern recognition using SIFT approach Procedia Computer Science 59 p. 567–576.
Setyawan I Timotius I K and Kalvin M, 2015 Automatic batik motifs classification using various combinations of SIFT features moments and k-Nearest Neighbor in Information
Technology and Electrical Engineering (ICITEE), 2015 7th International Conference on p.
–274.
Rangkuti A H Rasjid Z E and Santoso D J, 2015 Batik image classification using treeval and treefit as decision tree function in optimizing content based batik image retrieval Procedia
Computer Science 59 p. 577–583.
Suciati N Pratomo W A and Purwitasari D, 2014 Batik Motif classification using color-texture- based feature extraction and backpropagation neural network in Advanced Applied Informatics (IIAIAAI), 2014 IIAI 3rd International Conference on p. 517–521.
Lowe D G, 1999 Object recognition from local scale-invariant features in Computer vision,
The proceedings of the seventh IEEE international conference on 2 p. 1150–1157.
Montazer G A and Giveki D, 2015 Content based image retrieval system using clustered scale invariant feature transforms Optik-International Journal for Light and Electron Optics 126,
p. 1695–1699.
Azhar R Tuwohingide D Kamudi D Suciati N and others, 2015 Batik Image Classification
Using SIFT Feature Extraction, Bag of Features and Support Vector Machine Procedia
Computer Science 72 p. 24–30.
Huang C-R and Lee L-H, 2008 Contrastive Approach towards Text Source Classification based on Top-Bag-of-Word Similarity. in PACLIC p. 404–410.
Ko Y, 2012 A study of term weighting schemes using class information for text classification in
Proceedings of the 35th international ACM SIGIR conference on Research and development in information retrieval p. 1029–1030.
Dietterich T G and others, 2000 Ensemble methods in machine learning Multiple classifier
systems 1857 p. 1–15.
Graczyk M Lasota T Trawiski B and Trawiski K, 2010 Comparison of bagging, boosting and stacking ensembles applied to real estate appraisal Intelligent information and database systems p. 340–350.
Ponti Jr M P, 2011 Combining classifiers: from the creation of ensembles to the decision fusion
in Graphics, Patterns and Images Tutorials (SIBGRAPI-T), 2011 24th SIBGRAPI Conference on p. 1–10.
Wang R Ding K Yang J and Xue L, Oct. 2016 A novel method for image classification based on bag of visual words Journal of Visual Communication and Image Representation 40, Part A
p. 24–33.
Refbacks
- There are currently no refbacks.