Real-Time Detection of Young and Old Faces Using Template Matching and Fuzzy Associative Memory
DOI:
https://doi.org/10.29103/jacka.v1i4.18889Keywords:
Face detection, Template Matching, Fuzzy Associative Memory, Real-time, Young and old facesAbstract
A real-time facial detection system for identifying young and old faces has been developed using a combination of Template Matching and Fuzzy Associative Memory (FAM) methods. This study aims to improve accuracy in detecting facial age, particularly from images captured via a webcam. The system was tested across four categories: Old Men, Young Men, Old Women, and Young Women, with 10 image samples per category. The results indicate that the system achieved an accuracy rate of 83%. The Young Men category exhibited the best performance with 100% accuracy, while detection errors occurred in the Old Men and Old Women categories, with a false positive rate of 30%. The system proved to be more effective at detecting young faces than old faces. The primary challenge of this study was managing the complex variation in the patterns of older faces. Thus, further research is required to enhance the systems performance in detecting older faces and reduce the false positive rate.References
An H., T., T., Nhan T., C., & Hyung, I, C. 2013. Fuzzy Inference Systems Based on Fuzzy Associative Memory with Adjusting Algorithm for Selecting Optimal Membership Functions. International Journal of Intelegent Information Processing (IJIIP) 4(3): 102-110
Anisha,K., K. & Wilscy, M. 2011. Impulse Noise Removal from Medical Images Using Fuzzy Genetic Algorithm. International Journal of Multimedia and Its Applications (IJMA) 3(4): 93-106
Hambal, A, M., Pei, Z., & Ishabailu, F., L. 2017. Image Noise Reduction and Filtering Techniques. International Journal of Science and Research (IJSR) 6(3): 2033-2038.
Hemalatha, G & Sumanthi,C.P. 2014. Study of Techniques for Facial Detection and Expression Classification. International Journal of Computer Science & Engineering Survey (IJCSES) 3(2): 27-28.
Huang, 2009. Yu-Hao & Chiou-Shann Fuh. Face Detection and Smile Detection. Proceedings of IPPR Conference Computer on Vision, Graphics and Image Processing. 5-6, 108
Kamboj, P. & Rani, V. 2013. A Brief Study of Various Noise Reduction and Filtering Techniques. Journal of Global Research in Computer Science 4(4): 166-171.
Retno, S., Nababan, E. B., & Efendi, S (2019). Initial Centroid of K-Means Algorithm using Purity to Enhance the Clustering Results. International Journal of Trend in Research and Development (IJTRD), 6(3), 348-351
Malvika & Singh, H. 2015. A Novel Approach For Removal of Mixed Noise Using Genetic Algorithm. International Journal of Science and Research (IJSR) 5(11): 1836-1841.
Maryana, Fadlisyah, & Sujacka, R. 2017 Pendeteksi Tajwid Idgham Mutajanisain Pada Citra Al-Quran Menggunakan Fuzzy Associative Memory (FAM), TECHSI-Jurnal Teknik Informatika Universitas Malikussaleh. 9(2): 91-102.
Mu-Chun Su, Chun-Kai Yang, Shih-Chieh Lin, De-Yuan Huang, Yi-Zeng Hsieh, & Pa-Chun Wang. 2014 An SOM-based Automatic Facial Expression Recognition System, International Journal on Soft Computing, Artificial Intelligence and Applications (IJSCAI). 2(4): 45-57.
Paridhi, S., & Neelam, S. 2016. An Overview of Various Template Matching Methodologies in Image Processing. International Journal of Computer Application (IJCA). 153(10): 8-14.
Retno, S., Dinata, R.K., Hasdyna, N. (2023). Evaluasi model data chatbot dalam natural language processing menggunakan k-nearest neighbor. Jurnal CoSciTech (Computer Science and Information Technology. 4(1): 146-153
Sarbani Ghosh, & Samir K. Bandyopadhyay. A Method for Human Emotion Recognition System. 2015. British Journal of Mathematics & Computer Science 11(5): 1-27.
Victor, A., D., Ajay, D & Sudha, K. 2014. Delphi Adapted Fuzzy Associative Memories (DAFAM) as a multiple Expert System and its application to Study the Impacts of Climate Change on Environment. International Journal on Communication & Networking System (IJCNS). 3(1): 256-260.
Vijayarani, S., & Sakila, A. 2015. Template Matching Technique For Searching Words in Document Images. International Journal on Cybernetics & Informatics (IJCI). 4(6): 25-35.
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