Towards Exploring Fairness in Visual Transformer based Natural and GAN Image Detection Systems
Image forensics research has recently witnessed a lot of advancements towards developing computational models capable of accurately detecting natural images captured by cameras and GAN generated images. However, it is also important to ensure whether these computational models are fair enough and do...
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Zusammenfassung: | Image forensics research has recently witnessed a lot of advancements towards
developing computational models capable of accurately detecting natural images
captured by cameras and GAN generated images. However, it is also important to
ensure whether these computational models are fair enough and do not produce
biased outcomes that could eventually harm certain societal groups or cause
serious security threats. Exploring fairness in image forensic algorithms is an
initial step towards mitigating these biases. This study explores bias in
visual transformer based image forensic algorithms that classify natural and
GAN images, since visual transformers are recently being widely used in image
classification based tasks, including in the area of image forensics. The
proposed study procures bias evaluation corpora to analyze bias in gender,
racial, affective, and intersectional domains using a wide set of individual
and pairwise bias evaluation measures. Since the robustness of the algorithms
against image compression is an important factor to be considered in forensic
tasks, this study also analyzes the impact of image compression on model bias.
Hence to study the impact of image compression on model bias, a two-phase
evaluation setting is followed, where the experiments are carried out in
uncompressed and compressed evaluation settings. The study could identify bias
existences in the visual transformer based models distinguishing natural and
GAN images, and also observes that image compression impacts model biases,
predominantly amplifying the presence of biases in class GAN predictions. |
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DOI: | 10.48550/arxiv.2310.12076 |