Multi-Resolution Discrete Cosine Transform Fusion Technique Face Recognition Model
This work presents a Multi-Resolution Discrete Cosine Transform (MDCT) fusion technique
Fusion Feature-Level Face Recognition Model (FFLFRM) comprising face detection, feature extraction,
feature fusion, and face classification. It detects core facial characteristics as well as local and global
features utilizing Local Binary Pattern (LBP) and Principal Component Analysis (PCA) extraction.
MDCT fusion technique was applied, followed by Artificial Neural Network (ANN) classification.
Model testing used 10,000 faces derived from the Olivetti Research Laboratory (ORL) library. Model
performance was evaluated in comparison with three state-of-the-art models depending on Frequency
Partition (FP), Laplacian Pyramid (LP) and Covariance Intersection (CI) fusion techniques, in terms of
image features (low-resolution issues and occlusion) and facial characteristics (pose, and expression
per se and in relation to illumination). The MDCT-based model yielded promising recognition results,
with a 97.70% accuracy demonstrating effectiveness and robustness for challenges. Furthermore,
this work proved that the MDCT method used by the proposed FFLFRM is simpler, faster, and
more accurate than the Discrete Fourier Transform (DFT), Fast Fourier Transform (FFT) and Discrete
Wavelet Transform (DWT). As well as that it is an effective method for facial real-life applications.