Face Recognition System Based on the Multi-Resolution Singular Value Decomposition Fusion Technique
This study proposes a Fusion, Feature-Level, Face Recognition System (FFLFRS) that is based on
the Multi-Resolution, Singular Value Decomposition (MSVD) fusion technique. Face recognition in
the FFLFRS is achieved via four processes: face detection, feature extraction, feature fusion, and
face classification. In this system, the most significant face features (that is, the eyes, nose, and
mouth) are first detected. Then, local and global features are extracted by the Local Binary Pattern
(LBP) and Principal Component Analysis (PCA) extraction approaches. Afterwards, the extracted
features are fused by the MSVD method and classified by the Artificial Neural Network (ANN). The
proposed FFLFRS was verified on 10,000 face images drawn from the face images database of the
Olivetti Research Laboratory (ORL). Face recognition performance of this system was contrasted
with levels of performance of three state of the art, fusion-level, face recognition systems (FRSs)
depending on the Frequency Partition (FP), Laplacian Pyramid (LP), and Covariance Intersection
(CI) fusion methods. Ten-thousand images were employed to test the proposed model and assess its
performance, which was evaluated in terms of changes in pose, illumination, and expression, besides
low resolution and presence of occlusion. The face recognition results of the proposed FFLFRS are
encouraging. This system proved to be effective in dealing with images having challenges to face
recognition and it could achieve a recognition accuracy as high as 97.78%.