Gone With the Bits: Revealing Racial Bias in Low-Rate Neural Compression for Facial Images
Journal:
arXiv
Published Date:
May 5, 2025
Abstract
Neural compression methods are gaining popularity due to their superior
rate-distortion performance over traditional methods, even at extremely low
bitrates below 0.1 bpp. As deep learning architectures, these models are prone
to bias during the training process, potentially leading to unfair outcomes for
individuals in different groups. In this paper, we present a general,
structured, scalable framework for evaluating bias in neural image compression
models. Using this framework, we investigate racial bias in neural compression
algorithms by analyzing nine popular models and their variants. Through this
investigation, we first demonstrate that traditional distortion metrics are
ineffective in capturing bias in neural compression models. Next, we highlight
that racial bias is present in all neural compression models and can be
captured by examining facial phenotype degradation in image reconstructions. We
then examine the relationship between bias and realism in the decoded images
and demonstrate a trade-off across models. Finally, we show that utilizing a
racially balanced training set can reduce bias but is not a sufficient bias
mitigation strategy. We additionally show the bias can be attributed to
compression model bias and classification model bias. We believe that this work
is a first step towards evaluating and eliminating bias in neural image
compression models.