Feature fusion by using LBP, HOG, GIST descriptors and Canonical Correlation Analysis for face recognition

HTM Nhat, VT Hoang - 2019 26th international conference on …, 2019 - ieeexplore.ieee.org
HTM Nhat, VT Hoang
2019 26th international conference on telecommunications (ICT), 2019ieeexplore.ieee.org
Face recognition is the most active research topics in machine vision because of its highly
secured demands. The fusion of multiple features can enhance the accuracy of face
recognition systems instead of using only one type of feature. However, this leads to
increase the storage and processing time. In this work, we apply feature fusion by using
Canonical Correlation Analysis to concatenate two different feature sources for coding a
facial image. Three popular descriptors (LBP, HOG, GIST) have been investigated for …
Face recognition is the most active research topics in machine vision because of its highly secured demands. The fusion of multiple features can enhance the accuracy of face recognition systems instead of using only one type of feature. However, this leads to increase the storage and processing time. In this work, we apply feature fusion by using Canonical Correlation Analysis to concatenate two different feature sources for coding a facial image. Three popular descriptors (LBP, HOG, GIST) have been investigated for extracting facial features based on block division.
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