Hybrid Approach for Synthesis and Classification of Facial Images for Age Determination
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Abstract
Human Age Estimation from facial images has been an active research topic in computer
newlinevision due to its diverse field of application such as security and surveillance, biometric,
newlineentertainment, Internet access control, Electronic customer relationship management and
newlineInformation security. Human face renders both local and global facial features where
newlineglobal refers to facial appearance and local represents the wrinkles. The major
newlinecontribution of the work is hybrid approach for age classification and estimation using
newlineboth local and global features identified and extracted using face images. A novel method
newlinefor feature extraction is implemented for shape and texture in face image.
newlineIt was proposed to deliver a method that exhibits facial aging in humans. In the first
newlinestage, a model is developed that express a transformation of physically based
newlinecharacteristics that has refined facial deformations that undergo with age. This model
newlineimplicitly shows the physical and geometric variations in individual facial characteristics.
newlineIn the second stage, a process for texture transformations was modeled that exhibits facial
newlinewrinkles that are often visible during the aging phenomenon. For this transformation
newlinemodel as input, FGNET (Aging Database) is used that consist of face images with age
newlineinformation of different subjects at their different ages. The training for the extracted
newlinefeature dataset is performed for both global and local features individually as well as
newlinecombined using various classifiers and found results to be significant compared to results
newlineof other researchers. To further enhance the estimation capability the ensemble learning
newlinetechniques were implemented that improved the overall efficiency of the proposed model.
newlineThe improved efficiency is 95% as compared to efficiency of 89.13% achieved by Abbas
newlineet al.(2018).
newlineFurther, the global and local datasets are fused to which deep learning techniques were
newlineapplied for age classification and estimation mechanisms to further improve the
newlineefficiency of the proposed system. The Deep