论文标题
有损的图像压缩会影响面部识别中的种族偏见吗?
Does lossy image compression affect racial bias within face recognition?
论文作者
论文摘要
是的 - 这项研究研究了普通位置损失图像压缩对受试者的种族特征的面部识别算法的影响。我们采用最近提出的基于种族表型的偏见分析方法来衡量种族表型类别中不同损失压缩水平的影响。此外,我们确定了以识别性能的形式化色度取样和与种族相关的表型之间的关系。先前的工作调查了损失的JPEG压缩算法对当代面部识别性能的影响。但是,这种影响与不同种族相关的截面组以及这种影响的原因存在差距。通过广泛的实验设置,我们证明了常见的有损图像压缩方法对特定种族表型类别(例如较深的肤色(最高34.55 \%))对面部识别性能的负面影响更为明显。此外,在压缩过程中除去色度补充采样可提高所有受压缩影响的表型类别的错误匹配率(高达15.95 \%),包括较深的肤色,宽阔的鼻子,大嘴唇,大嘴唇和单层眼类别。此外,我们概述了可能归因于这种现象的基本原因的特征,例如JPEG等有损压缩算法。
Yes - This study investigates the impact of commonplace lossy image compression on face recognition algorithms with regard to the racial characteristics of the subject. We adopt a recently proposed racial phenotype-based bias analysis methodology to measure the effect of varying levels of lossy compression across racial phenotype categories. Additionally, we determine the relationship between chroma-subsampling and race-related phenotypes for recognition performance. Prior work investigates the impact of lossy JPEG compression algorithm on contemporary face recognition performance. However, there is a gap in how this impact varies with different race-related inter-sectional groups and the cause of this impact. Via an extensive experimental setup, we demonstrate that common lossy image compression approaches have a more pronounced negative impact on facial recognition performance for specific racial phenotype categories such as darker skin tones (by up to 34.55\%). Furthermore, removing chroma-subsampling during compression improves the false matching rate (up to 15.95\%) across all phenotype categories affected by the compression, including darker skin tones, wide noses, big lips, and monolid eye categories. In addition, we outline the characteristics that may be attributable as the underlying cause of such phenomenon for lossy compression algorithms such as JPEG.