论文标题

面部检测中的稳健性差异

Robustness Disparities in Face Detection

论文作者

Dooley, Samuel, Wei, George Z., Goldstein, Tom, Dickerson, John P.

论文摘要

在过去的十年中,大型公司部署了面部分析系统,并受到学者和活动家的批评。许多现有的算法审核检查了这些系统在面部分析系统的后期元素上的性能,例如面部识别和年龄,情感或感知的性别预测;但是,从公平的角度来看,这些系统的核心组成部分已被大量研究:面部检测,有时称为面部定位。由于面部检测是面部分析系统的前提步骤,因此我们在面部检测中观察到的偏见将下游流向其他组成部分,例如面部识别和情感预测。此外,没有先前的工作集中在各种扰动和腐败下这些系统的鲁棒性,这留下了一个问题,即这些现象如何影响各种人。我们介绍了面部检测系统的第一个详细基准,特别研究了商业和学术模型噪声的鲁棒性。我们使用标准并最近发布的学术面部数据集来定量分析面部检测稳定性的趋势。在所有数据集和系统中,我们通常会发现,$ \ textit {masculine呈现} $的个人照片,$ \ textit {loder} $,$ \ textit {darker {darker pross type} $,或具有$ \ textit {dim dim lighting} $比其他身份的对手更易于错误。

Facial analysis systems have been deployed by large companies and critiqued by scholars and activists for the past decade. Many existing algorithmic audits examine the performance of these systems on later stage elements of facial analysis systems like facial recognition and age, emotion, or perceived gender prediction; however, a core component to these systems has been vastly understudied from a fairness perspective: face detection, sometimes called face localization. Since face detection is a pre-requisite step in facial analysis systems, the bias we observe in face detection will flow downstream to the other components like facial recognition and emotion prediction. Additionally, no prior work has focused on the robustness of these systems under various perturbations and corruptions, which leaves open the question of how various people are impacted by these phenomena. We present the first of its kind detailed benchmark of face detection systems, specifically examining the robustness to noise of commercial and academic models. We use both standard and recently released academic facial datasets to quantitatively analyze trends in face detection robustness. Across all the datasets and systems, we generally find that photos of individuals who are $\textit{masculine presenting}$, $\textit{older}$, of $\textit{darker skin type}$, or have $\textit{dim lighting}$ are more susceptible to errors than their counterparts in other identities.

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