CVCYJun 15, 2021

Demographic Fairness in Face Identification: The Watchlist Imbalance Effect

arXiv:2106.08049v31 citationsHas Code
AI Analysis

This addresses fairness issues in facial recognition systems for researchers and practitioners, representing an incremental analysis of a known effect.

The study tackled the problem of demographic fairness in face identification by analyzing how gallery composition affects performance differentials, showing that database composition significantly impacts identification performance even when verification differentials are minor.

Recently, different researchers have found that the gallery composition of a face database can induce performance differentials to facial identification systems in which a probe image is compared against up to all stored reference images to reach a biometric decision. This negative effect is referred to as "watchlist imbalance effect". In this work, we present a method to theoretically estimate said effect for a biometric identification system given its verification performance across demographic groups and the composition of the used gallery. Further, we report results for identification experiments on differently composed demographic subsets, i.e. females and males, of the public academic MORPH database using the open-source ArcFace face recognition system. It is shown that the database composition has a huge impact on performance differentials in biometric identification systems, even if performance differentials are less pronounced in the verification scenario. This study represents the first detailed analysis of the watchlist imbalance effect which is expected to be of high interest for future research in the field of facial recognition.

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