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Facial age estimation using tensor based subspace learning and deep random forests

Oussama Guehairia, Fadi Dornaika, Abdelmalik Ouamane, Abdelmalik Taleb‐Ahmed

2022Information Sciences26 citationsDOIOpen Access PDF

Abstract

Recently, the estimation of facial age has attracted much attention. This letter extends and improves a recently developed method (Guehairia et al., 2020) for fusing multiple deep facial features for age estimation. This method was based on deep random forests. We propose a new pipeline that integrates tensor-based subspace learning before applying DRFs. Deep face features of a training set are represented as a 3D tensor. Multi-linear Whitened Principal Component (MWPCA) and Tensor Exponential Discriminant (TEDA) are used to extract the most discriminative information. The tensor subspace features are then fed into DRFs to predict age. Experiments conducted on five public face databases show that our method can compete with many state-of-the-art methods.

Topics & Concepts

Subspace topologyArtificial intelligencePrincipal component analysisDiscriminative modelTensor (intrinsic definition)Pattern recognition (psychology)Random forestComputer sciencePipeline (software)Set (abstract data type)Linear discriminant analysisDeep learningFace (sociological concept)Robust principal component analysisEstimatorMathematicsMachine learningStatisticsPure mathematicsSociologyProgramming languageSocial scienceFace recognition and analysisCleft Lip and Palate Research
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