Toward Fair Facial Expression Recognition with Improved Distribution Alignment

Mojtaba Kolahdouzi, Ali Etemad
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Abstract

We present a novel approach to mitigate bias in facial expression recognition (FER) models. Our method aims to reduce sensitive attribute information such as gender, age, or race, in the embeddings produced by FER models. We employ a kernel mean shrinkage estimator to estimate the kernel mean of the distributions of the embeddings associated with different sensitive attribute groups, such as young and old, in the Hilbert space. Using this estimation, we calculate the maximum mean discrepancy (MMD) distance between the distributions and incorporate it in the classifier loss along with an adversarial loss, which is then minimized through the learning process to improve the distribution alignment. Our method makes sensitive attributes less recognizable for the model, which in turn promotes fairness. Additionally, for the first time, we analyze the notion of attractiveness as an important sensitive attribute in FER models and demonstrate that FER models can indeed exhibit biases towards more attractive faces. To prove the efficacy of our model in reducing bias regarding different sensitive attributes (including the newly proposed attractiveness attribute), we perform several experiments on two widely used datasets, CelebA and RAF-DB. The results in terms of both accuracy and fairness measures outperform the state-of-the-art in most cases, demonstrating the effectiveness of the proposed method.
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基于改进分布对齐的公平面部表情识别
我们提出了一种新的方法来减轻面部表情识别(FER)模型中的偏见。我们的方法旨在减少FER模型产生的嵌入中的敏感属性信息,如性别、年龄或种族。我们使用核均值收缩估计器来估计Hilbert空间中与不同敏感属性组(如年轻和年老)相关的嵌入分布的核均值。使用此估计,我们计算分布之间的最大平均差异(MMD)距离,并将其与对抗损失一起纳入分类器损失中,然后通过学习过程将其最小化以改善分布一致性。我们的方法降低了模型的敏感属性的可识别性,从而提高了公平性。此外,我们首次分析了吸引力作为FER模型中一个重要敏感属性的概念,并证明了FER模型确实会对更有吸引力的面孔表现出偏见。为了证明我们的模型在减少不同敏感属性(包括新提出的吸引力属性)的偏差方面的有效性,我们在两个广泛使用的数据集CelebA和RAF-DB上进行了几个实验。结果在准确性和公平性方面的措施优于国家的最先进的在大多数情况下,证明了所提出的方法的有效性。
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