Analysis of age invariant face recognition using quadratic support vector machine-principal component analysis

Author:

Dhamija Ashutosh1,Dubey R. B.2

Affiliation:

1. ECE Department, SRM University, Sonepat, Haryana, India

2. EEE Department, SRM University, Sonepat, Haryana, India

Abstract

Face recognition is one of the most challenging and demanding field, since aging affects the shape and structure of the face. Age invariant face recognition is a relatively new area in face recognition studies, which in real-world implementations recently gained considerable interest due to its huge potential and relevance. The Age invariant face recognition, however, is still evolving and evolving, providing substantial potential for further study and progress in accuracy. Major issues with the age invariant face recognition involve major variations in appearance, texture, and facial features and discrepancies in position and illumination. These problems restrict the age invariant face recognition systems developed and intensify identity recognition tasks. To address this problem, a new technique Quadratic Support Vector Machine- Principal Component Analysis (QSVM-PCA) is introduced. Experimental results suggest that our QSVM-PCA achieved better results especially when the age range is larger than other existing techniques of face-aging dataset of FGNET. The maximum accuracy achieved by demonstrated methodology is 98.87%.

Publisher

IOS Press

Subject

Artificial Intelligence,General Engineering,Statistics and Probability

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