Saliency-Based diversity and fairness Metric and FaceKeepOriginalAugment: A Novel Approach for Enhancing Fairness and Diversity
Teerath Kumar, Alessandra Mileo, Malika Bendechache

TL;DR
This paper introduces FaceKeepOriginalAugment, a novel data augmentation method that enhances fairness and diversity in computer vision models by addressing biases and maintaining data variety, validated across multiple datasets and bias types.
Contribution
The paper presents FaceKeepOriginalAugment, extending KeepOriginalAugment to mitigate biases and improve diversity, with new metrics for quantifying fairness and diversity in augmented datasets.
Findings
Reduced gender bias in CNNs and ViTs.
Increased dataset diversity measured by ISS.
Enhanced fairness and inclusivity in vision models.
Abstract
Data augmentation has become a pivotal tool in enhancing the performance of computer vision tasks, with the KeepOriginalAugment method emerging as a standout technique for its intelligent incorporation of salient regions within less prominent areas, enabling augmentation in both regions. Despite its success in image classification, its potential in addressing biases remains unexplored. In this study, we introduce an extension of the KeepOriginalAugment method, termed FaceKeepOriginalAugment, which explores various debiasing aspects-geographical, gender, and stereotypical biases-in computer vision models. By maintaining a delicate balance between data diversity and information preservation, our approach empowers models to exploit both diverse salient and non-salient regions, thereby fostering increased diversity and debiasing effects. We investigate multiple strategies for determining…
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Taxonomy
TopicsEthics and Social Impacts of AI
