An Application of SURF Algorithm on JAKIM’s Halal Logo Detection
DOI:
https://doi.org/10.7187/GJATSI072023-2Keywords:
SURF algorithm, JAKIM, logo, detectionAbstract
Halal logo plays an important role in influencing Muslim consumer’s level of confidence in the Halal status of a product. However, certified Halal logo can be easily manipulated. Besides, detecting and recognizing the credibility of the logo is visually challenging without any computer-vision assistance. Therefore, an automated system is indeed in need to detect and verify the authenticity of the logo. This study proposed the application of Speeded Up Robust Features (SURF) algorithm in detecting various images of Halal logo, which then was matched with the reference image of certified Halal logo by JAKIM. Accuracy rate of the detected image was then calculated. A total of 100 images of certified logo and fake Halal logo gathered from various resources were used. Testing set which are independent of the training set were used and managed to attain 85.71% of accuracy rate. The experiments show that the proposed method achieved the desirably good result and was able to be at par with other existing methods.
References
Adila Sosianikaa & Fatya Alty Amalia (2020). Uncovering Indonesian Millennial's Halal Food Purchase Intention: Hall Value and Halal Logo as the Antecedents. International Journal of Applied Business Research 2020, Vol. 2, No. 1, pp. 31-45.
Alaei,A. &d Delalandre, A. (2014). A Complete Logo Detection/Recognition System for Document Images. 11th IAPR International Workshop on Document Analysis Systems.
Hang, H. & Hu, Q. Fast image matching based on improved SURF algorithm. Electronics, Communication and Control (ICECC) (2011), 1460-1463.
Halal Malaysia. (December 2021). Definition of Halal. https://www.halal.gov.my/v4/index.php?data=bW9kdWxlcy9uZXdzOzs7Ow==&utama=panduan&ids=gp1, retrieve on 17th December 2021.
Ismail, W. R. W., Othman, M., Rahman, R. A., Kamarulzaman, N. H. & Rahman, S. A. (2016). Halal Malaysia Logo or Brand: The Hidden Gap. Procedia Economics and Finance, Volume 37, 254 – 261.
KhairilAmirin Kassim, Nor Ashikin Mohamad Kamal & Norizan Mat Diah. (2020). JAKIM Halal Logo Verification using Image Processing. International Journal of Advanced Trends in Computer Science and Engineering, Volume 9, No. 1.3, 2020. 21-26.
Masnono, A. (2005). Factors Influencing the Muslim Consumers’ Level of Confidence on Halal Logo Issued by JAKIM: An Empirical Study. Universiti Putra Malaysia (UPM), Ph.D. Thesis.
Mohd, M. N. H., Wahab, M. H. A. & Yaakob, A. (2008). ‘Halal’ Logo Detection and Recognition System. 4th International Conference of Information Technology and Multimedia at UNITEN (ICIMU) (2008), 618-625.
Musale, P. (2015) Improve Speed Of Logo Detection and Recognition From The Images Using SURF. International Journal of Advancements in Research & Technology, Volume 4, Issue 12, December -2015. 1-6.
Prashar, P. & Kundra, H. (2015). Hybrid Approach for Image Classification using SVM Classifier and SURF Descriptor. International Journal of Computer Science and Information Technologies (IJCSIT), Volume 6 (1) 2015, 249-251.
Razali, S. M., Isa, N. F., Htike, Z. & Naing, W. Y. N. (2015). Vision-Based Verification of Authentic Jakim Halal Logo. ARPN Journal of Engineering and Applied Sciences. Volume 10(21) (2015), 10122-10130.
Rezai, G. (2008). Consumers’ Confidence in Halal Labeled Manufactured Food in Malaysia. Universiti Putra Malaysia (UPM), Ph.D. Thesis.
Saipullah, K. M. & Ismail, N. A. (2015). Determining Halal Product Using Automated Recognition of Product Logo. Journal of Theoretical and Applied Information Technology Volume 77(2) (2015), 190-198.
Shafiq, A., Haque, A., K. M. & Omar, A. (2015). Multiple Halal Logo and Malay’s Beliefs: A Case of Mixed Signals. International Food Research Journal Volume 22(4) (2015), 1727-1735.
Sunaryo, Achmad Sudiro (2018). The Impact of Brand Awareness on Purchase Decision: Mediating Effect of Halal logo and Religious beliefs on Halal Food in Malang, Indonesia. Proceedings of Sydney International Business Research Conference, Novotel Sydney Central, Sydney, Australia, 54-62.
Sykora, P., Kamencay, P. & Hudec, R. (2014). Comparison of SIFT and SURF Methods for Use on Hand Gesture Recognition Based on Depth Map. AASRI Procedia 9 (2014), 19 – 24.
Xia, L. Qi, F. & Zhou, Q. (2008). A Learning-based Logo Recognition Algorithm Using SIFT and Efficient Correspondence Matching. International Conference on Information and Automation (2008), 1767-1772.
Yang, H., Zhai, L., Li, L., Liu, Z., Luo, Y., & Wang, Y. (2013). An Efficient Vehicle Model Recognition Method. JSW Volume 8(8) (2013).