Bias Remediation in Driver Drowsiness Detection systems using Generative Adversarial Networks
Mkhuseli Ngxande, Jules-Raymond Tapamo, Michael Burke

TL;DR
This paper presents a novel GAN-based data augmentation framework to reduce ethnicity bias in driver drowsiness detection systems, improving performance across diverse facial attributes.
Contribution
Introduces a targeted data augmentation method using GANs and population bias visualization to enhance model generalization across ethnic groups.
Findings
Improved detection accuracy for underrepresented ethnicity groups.
GAN-based augmentation outperforms traditional methods.
Framework applicable to other bias-sensitive applications.
Abstract
Datasets are crucial when training a deep neural network. When datasets are unrepresentative, trained models are prone to bias because they are unable to generalise to real world settings. This is particularly problematic for models trained in specific cultural contexts, which may not represent a wide range of races, and thus fail to generalise. This is a particular challenge for Driver drowsiness detection, where many publicly available datasets are unrepresentative as they cover only certain ethnicity groups. Traditional augmentation methods are unable to improve a model's performance when tested on other groups with different facial attributes, and it is often challenging to build new, more representative datasets. In this paper, we introduce a novel framework that boosts the performance of detection of drowsiness for different ethnicity groups. Our framework improves Convolutional…
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