African Gender Classification Using Clothing Identification Via Deep Learning
- URL: http://arxiv.org/abs/2503.00058v1
- Date: Wed, 26 Feb 2025 20:59:59 GMT
- Title: African Gender Classification Using Clothing Identification Via Deep Learning
- Authors: Samuel Ozechi,
- Abstract summary: We use the AFRIFASHION1600 dataset, a curated collection of 1,600 images of African traditional clothing labeled into two gender classes: male and female.<n>A deep learning model, based on a modified VGG16 architecture and trained using transfer learning, was developed for classification.<n>The model achieved an accuracy of 87% on the test set, demonstrating strong predictive capability despite dataset imbalances favoring female samples.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Human attribute identification and classification are crucial in computer vision, driving the development of innovative recognition systems. Traditional gender classification methods primarily rely on facial recognition, which, while effective, struggles under non-ideal conditions such as blurriness, side views, or partial occlusions. This study explores an alternative approach by leveraging clothing identification, specifically focusing on African traditional attire, which carries culturally significant and gender-specific features. We use the AFRIFASHION1600 dataset, a curated collection of 1,600 images of African traditional clothing labeled into two gender classes: male and female. A deep learning model, based on a modified VGG16 architecture and trained using transfer learning, was developed for classification. Data augmentation was applied to address the challenges posed by the relatively small dataset and to mitigate overfitting. The model achieved an accuracy of 87% on the test set, demonstrating strong predictive capability despite dataset imbalances favoring female samples. These findings highlight the potential of clothing-based identification as a complementary technique to facial recognition for gender classification in African contexts. Future research should focus on expanding and balancing datasets to enhance classification robustness and improve the applicability of clothing-based gender recognition systems.
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