Facial Analysis Systems and Down Syndrome
Marco Rondina, Fabiana Vinci, Antonio Vetr\`o, Juan Carlos De Martin

TL;DR
This study investigates the limitations and biases of facial analysis systems when applied to faces of people with Down syndrome, revealing accuracy issues and social stereotypes propagated by current technologies.
Contribution
It introduces a specialized dataset and evaluates commercial facial analysis tools on faces of people with Down syndrome, highlighting specific biases and limitations.
Findings
Lower accuracy in gender recognition for males with Down syndrome
Adults with Down syndrome often misclassified as children
Social stereotypes influence face labeling in both groups
Abstract
The ethical, social and legal issues surrounding facial analysis technologies have been widely debated in recent years. Key critics have argued that these technologies can perpetuate bias and discrimination, particularly against marginalized groups. We contribute to this field of research by reporting on the limitations of facial analysis systems with the faces of people with Down syndrome: this particularly vulnerable group has received very little attention in the literature so far. This study involved the creation of a specific dataset of face images. An experimental group with faces of people with Down syndrome, and a control group with faces of people who are not affected by the syndrome. Two commercial tools were tested on the dataset, along three tasks: gender recognition, age prediction and face labelling. The results show an overall lower accuracy of prediction in the…
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Taxonomy
MethodsSoftmax · Attention Is All You Need
