Recognition of Augmented Frontal Face Images Using FFT-PCA/ SVD Algorithm
Date
2021
Journal Title
Journal ISSN
Volume Title
Publisher
Hindawi
Abstract
In spite of the differences in visual stimulus of human beings such as ageing, changing conditions of a person, and occlusion,
recognition can even be done at a glance by the human eye many years after the previous encounter. It has been established that
facial differences like the hairstyle changes, growing of one’s beard, wearing of glasses, and other forms of occlusions can hardly
hinder the power of the human brain from making a face recognition. However, the same cannot easily be said about automated
intelligent systems which have been developed to mimic the skill of the human brain to aid in recognition. There have been
growing interests in developing a resilient and efficient recognition system mainly because of its numerous application areas
(access control, entertainment/leisure, security system based on biometric data, and user-friendly human-machine interfaces).
Although there have been numerous researches on face recognition under varying pose, illumination, expression, and image
degradations, problems caused by occlusions are mostly ignored. )is study thus focuses on facial occlusions and proposes an
enhancement mechanism through face image augmentation to improve the recognition of occluded face images. This study
assessed the performance of Principal Component Analysis with Singular Value Decomposition using Fast Fourier Transform
(FFT-PCA/SVD) for preprocessing face recognition algorithm on face images with missingness and augmented face image
database. It was found that the average recognition rates for the FFT-PCA/SVD algorithm were the same (90%) when face images
with missingness and augmented face images were used as test images, respectively. )e statistical evaluation revealed that there
exists a significant difference in the average recognition distances for the face images with missingness and augmented face images
when FFT-PCA/SVD is used for recognition. Augmented face images tend to have a relatively lower average recognition distance
when used as test images. This finding is contrary to the equal performance assessment by the adopted numerical technique. The
MICE algorithm is therefore recommended as a suitable imputation mechanism for enhancing/improving the performance of the
face recognition system.
Description
Research Article