Indonesian Music Classification on Folk and Dangdut Genre Based on Rolloff Spectral Feature Using Support Vector Machine (SVM) Algorithm

https://doi.org/10.22146/ijccs.54646

Brizky Ramadhani Ismanto(1*), Tubagus Maulana Kusuma(2), Dina Anggraini(3)

(1) Department of Management Information System; Universitas Gunadarma
(2) Department of Management Information System; Universitas Gunadarma
(3) Department of Management Information System; Universitas Gunadarma
(*) Corresponding Author

Abstract


Music Genre Classification is one of the interesting digital music processing topics. Genre is a category of artistry, in this case, especially music, to characterize and categorize music is now available in various forms and sources. One of the applications is in determining the music genre classification on folk songs and dangdut songs.

The main problem in the classification music genre is to find a combination of features and classifiers that can provide the best result in classifying music files into music genres. So we need to develop methods and algorithms that can classify genres appropriately. This problem can be solved by using the Support Vector Machine (SVM). The genre classification process begins by selecting the song file that will be classified by the genre, then the preprocessing process, the collection features by utilizing feature extraction, and the last process is Support Vector Machine (SVM) classification process to produce genre types from selected song files.

The final result of this research is to classify Indonesian folk music genre and dangdut music genre along with the 83.3% accuracy values that indicate the level of system relevance to the results of music genre classification and to provide genre labels on music files as to facilitate the management and search of music files.


Keywords


Classification; Music Genre; Support Vector Machine (SVM)

Full Text:

PDF


References

[1]

R. J. M. Quinto, R. O. Atienze and N. M. C. Tiglao, "Jazz Music Sub-Genre Classification Using Deep Learning," IEEE, 2017.

[2]

S. Selvin, V. R, E. Gopalakrishnan, V. K. Menon and S. Kp, "Stock Price Prediction Using LSTM, RNN and CNN-Sliding Window Model," vol. 9, 2017.

[3]

A. Elbir, H. B. Cam, M. E. Lycian, B. Ozturk and N. Aydin, "Music Genre Classification and Recommendation by Using Machine Learning Techniques," IEEE, 2018.

[4]

Betteng, Rico Chrisnawan, "Content-Based Filtering Music Information Retrieval Based on Genre, Mood and Tones by Audio Input," 2013.

[5]

Wintara, I Gusti Agung Dian; Magdalena. MT, Ir. Rita; Ramatryana. ST. MT, I Nyoman Apraz;, "Simulation And Analysis Of Support Vector Machine For Genre Classification Of Music," ISSN, vol. 4, 2017.

[6] S.Daudu, “Problem and Prospect of Folk Media Usage for Agricultural Extension Service Delivery,”ISMIR, 2017.

[7] Hartono, "Seni Tari dan Lagu Daerah Sebagai Sarana Aktualisasi Diri Dan Apresiasi", Jurnal Penelitian: Imajinasi (Vol. 2. No.1) (2017).

[8] Alimin, Al Ashadi, "Peran Seni Musik Dalam Pendidikan Multikultural", Jurnal Pembang unan Pendidikan: Fondasi dan Aplikasi (Vol.2. No.2) (2015).

[9] M. Poppy, “Music Genre Classification Using The Support Vector Machine,” Journal of Theoretical and Applied Information Technology, 2016.

[10] R.C.Maher, "Audio Forensic Examinationâ: Authenticity, Enhancement, And Interpretation", IEEE Signal Processing Magazine, Vol. 84 (2019).

[11] Smith and Steven.W, The Scientist and Engineer's Guide to Digital Signal Processing (California Technical Publishing, 2015).

[12] D.G.J.L.Babu, Kaji, Baniya, "Automatic Music Genre Classification Using Timbral Texture and Rhythmic Content Features", ICACT Transactions on Advanced Communications Technology (TACT), vol. 3, no. 3 (2014).

[13] R.S. Alven, P.S. Endah, “Penerapan Metode Support Vector Machine (SVM) Dalam Klasifikasi Kualitas Pengelasan SMAW (Shield Metal ARC Welding)”. Jurnal Ilmiah Edutic, vol. 5, No.1, 2018.

[14] S.R. Gunn, “Support Vector Machine for Classification and Regression,” Isis Technical Report, 2018.

[15] G. Jawaherlalnehru, S. Jothilakshmi. “Music Genre Classification using Deep Neural Networks”, IJSRSET, vol. 4, 2018.

[16] Liu, H., Cocea, M. “Semi-random partitioning of data into training and test sets in granular computing context. Granul. Comput”. 2, 357–386 (2017). https://doi.org/10.1007/s41066-017-0049-2



DOI: https://doi.org/10.22146/ijccs.54646

Article Metrics

Abstract views : 3944 | views : 2858

Refbacks

  • There are currently no refbacks.




Copyright (c) 2021 IJCCS (Indonesian Journal of Computing and Cybernetics Systems)

Creative Commons License
This work is licensed under a Creative Commons Attribution-ShareAlike 4.0 International License.



Copyright of :
IJCCS (Indonesian Journal of Computing and Cybernetics Systems)
ISSN 1978-1520 (print); ISSN 2460-7258 (online)
is a scientific journal the results of Computing
and Cybernetics Systems
A publication of IndoCEISS.
Gedung S1 Ruang 416 FMIPA UGM, Sekip Utara, Yogyakarta 55281
Fax: +62274 555133
email:ijccs.mipa@ugm.ac.id | http://jurnal.ugm.ac.id/ijccs



View My Stats1
View My Stats2