Face recognition is categorized as a biometric technology that employs the use of computer ability in image processing to detect and recognize human faces. Face recognition system has numerous applications for many purposes such as for access control, law enforcement and surveillance thus this system is dominant in present technology. Generally, face recognition system become more advance in term of the accuracy and implementation. However, there are a few parameters that effects the accuracy of recognition system for examples, the pose invariant, illumination effect, size of image and noise tolerance. Even though there are a number of systems were already available in the literature, the complete understanding of their performances are relatively limited. This is due to many systems focused on a narrow application band - therefore, a comprehensive analysis are needed in order to understand their performances leading to establishing the conditions for successful face recognition system. In this paper we developed a synthetic model to represent facial images to be used as a platform for performance analysis of facial recognition systems. The model includes 5 face types with the ability to vary all parameters that are affecting recognition performance - measurement noise, face size and face-background intensity differences. The model is important as it provide an avenue for performance analysis of facial recognition systems.
CITATION STYLE
Assyakirin, M. H., Shafriza Nisha, B., Haniza, Y., Fathinul Syahir, A. S., & Muhammad Juhairi, A. S. (2021). Modelling of Facial Images for Analysis of Recognition System. In Journal of Physics: Conference Series (Vol. 2107). IOP Publishing Ltd. https://doi.org/10.1088/1742-6596/2107/1/012041
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