Fusion of Deep and Shallow Features for Face Kinship Verification
- URL: http://arxiv.org/abs/2312.10462v1
- Date: Sat, 16 Dec 2023 14:36:43 GMT
- Title: Fusion of Deep and Shallow Features for Face Kinship Verification
- Authors: Belabbaci El Ouanas, Khammari Mohammed, Chouchane Ammar, Mohcene
Bessaoudi, Abdelmalik Ouamane, Akram Abderraouf Gharbi
- Abstract summary: This work makes notable contributions by incorporating a preprocessing technique known as Multiscale Retinex (MSR)
Our approach harnesses the strength of complementary deep (VGG16) and shallow texture descriptors (BSIF) by combining them at the score level using Logistic Regression (LR) technique.
- Score: 0.44855664250147465
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Kinship verification from face images is a novel and formidable challenge in
the realms of pattern recognition and computer vision. This work makes notable
contributions by incorporating a preprocessing technique known as Multiscale
Retinex (MSR), which enhances image quality. Our approach harnesses the
strength of complementary deep (VGG16) and shallow texture descriptors (BSIF)
by combining them at the score level using Logistic Regression (LR) technique.
We assess the effectiveness of our approach by conducting comprehensive
experiments on three challenging kinship datasets: Cornell Kin Face, UB Kin
Face and TS Kin Face
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