Deep Generative Views to Mitigate Gender Classification Bias Across Gender-Race Groups

Sreeraj Ramachandran, A. Rattani
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引用次数: 5

Abstract

Published studies have suggested the bias of automated face-based gender classification algorithms across gender-race groups. Specifically, unequal accuracy rates were obtained for women and dark-skinned people. To mitigate the bias of gender classifiers, the vision community has developed several strategies. However, the efficacy of these mitigation strategies is demonstrated for a limited number of races mostly, Caucasian and African-American. Further, these strategies often offer a trade-off between bias and classification accuracy. To further advance the state-of-the-art, we leverage the power of generative views, structured learning, and evidential learning towards mitigating gender classification bias. We demonstrate the superiority of our bias mitigation strategy in improving classification accuracy and reducing bias across gender-racial groups through extensive experimental validation, resulting in state-of-the-art performance in intra- and cross dataset evaluations.
深度生成视图减轻性别-种族群体的性别分类偏见
已发表的研究表明,基于面部的自动性别分类算法在性别种族群体中存在偏见。具体来说,女性和深肤色人群的准确率是不相等的。为了减轻性别分类器的偏见,视觉界制定了几种策略。然而,这些缓解策略的有效性在少数种族中得到了证明,主要是白种人和非洲裔美国人。此外,这些策略通常在偏差和分类准确性之间进行权衡。为了进一步推进最先进的技术,我们利用生成视图、结构化学习和证据学习的力量来减轻性别分类偏见。通过广泛的实验验证,我们证明了我们的偏见缓解策略在提高分类准确性和减少跨性别种族群体的偏见方面的优势,从而在内部和交叉数据集评估中获得了最先进的性能。
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