A Deep Learning Approach for Facial Attribute Manipulation and Reconstruction in Surveillance and Reconnaissance
Journal:
arXiv
Published Date:
Jun 6, 2025
Abstract
Surveillance systems play a critical role in security and reconnaissance, but
their performance is often compromised by low-quality images and videos,
leading to reduced accuracy in face recognition. Additionally, existing
AI-based facial analysis models suffer from biases related to skin tone
variations and partially occluded faces, further limiting their effectiveness
in diverse real-world scenarios. These challenges are the results of data
limitations and imbalances, where available training datasets lack sufficient
diversity, resulting in unfair and unreliable facial recognition performance.
To address these issues, we propose a data-driven platform that enhances
surveillance capabilities by generating synthetic training data tailored to
compensate for dataset biases. Our approach leverages deep learning-based
facial attribute manipulation and reconstruction using autoencoders and
Generative Adversarial Networks (GANs) to create diverse and high-quality
facial datasets. Additionally, our system integrates an image enhancement
module, improving the clarity of low-resolution or occluded faces in
surveillance footage. We evaluate our approach using the CelebA dataset,
demonstrating that the proposed platform enhances both training data diversity
and model fairness. This work contributes to reducing bias in AI-based facial
analysis and improving surveillance accuracy in challenging environments,
leading to fairer and more reliable security applications.