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Papers/A Hybrid Transformer-Sequencer approach for Age and Gender...

A Hybrid Transformer-Sequencer approach for Age and Gender classification from in-wild facial images

Aakash Singh, Vivek Kumar Singh

2024-03-19Gender ClassificationAge And Gender ClassificationClassification
PaperPDF

Abstract

The advancements in computer vision and image processing techniques have led to emergence of new application in the domain of visual surveillance, targeted advertisement, content-based searching, and human-computer interaction etc. Out of the various techniques in computer vision, face analysis, in particular, has gained much attention. Several previous studies have tried to explore different applications of facial feature processing for a variety of tasks, including age and gender classification. However, despite several previous studies having explored the problem, the age and gender classification of in-wild human faces is still far from the achieving the desired levels of accuracy required for real-world applications. This paper, therefore, attempts to bridge this gap by proposing a hybrid model that combines self-attention and BiLSTM approaches for age and gender classification problems. The proposed models performance is compared with several state-of-the-art model proposed so far. An improvement of approximately 10percent and 6percent over the state-of-the-art implementations for age and gender classification, respectively, are noted for the proposed model. The proposed model is thus found to achieve superior performance and is found to provide a more generalized learning. The model can, therefore, be applied as a core classification component in various image processing and computer vision problems.

Results

TaskDatasetMetricValueModel
Facial Recognition and ModellingAdience GenderAccuracy (5-fold)96.56ViT-hSeq
Facial Recognition and ModellingAdience AgeAccuracy (5-fold)84.91ViT-hSeq
Face ReconstructionAdience GenderAccuracy (5-fold)96.56ViT-hSeq
Face ReconstructionAdience AgeAccuracy (5-fold)84.91ViT-hSeq
3DAdience GenderAccuracy (5-fold)96.56ViT-hSeq
3DAdience AgeAccuracy (5-fold)84.91ViT-hSeq
3D Face ModellingAdience GenderAccuracy (5-fold)96.56ViT-hSeq
3D Face ModellingAdience AgeAccuracy (5-fold)84.91ViT-hSeq
3D Face ReconstructionAdience GenderAccuracy (5-fold)96.56ViT-hSeq
3D Face ReconstructionAdience AgeAccuracy (5-fold)84.91ViT-hSeq
Age And Gender ClassificationAdience GenderAccuracy (5-fold)96.56ViT-hSeq
Age And Gender ClassificationAdience AgeAccuracy (5-fold)84.91ViT-hSeq

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