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Main Authors: Schumann, Candice, Olanubi, Gbolahan O., Wright, Auriel, Monk Jr., Ellis, Heldreth, Courtney, Ricco, Susanna
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2305.09073
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author Schumann, Candice
Olanubi, Gbolahan O.
Wright, Auriel
Monk Jr., Ellis
Heldreth, Courtney
Ricco, Susanna
author_facet Schumann, Candice
Olanubi, Gbolahan O.
Wright, Auriel
Monk Jr., Ellis
Heldreth, Courtney
Ricco, Susanna
contents Understanding different human attributes and how they affect model behavior may become a standard need for all model creation and usage, from traditional computer vision tasks to the newest multimodal generative AI systems. In computer vision specifically, we have relied on datasets augmented with perceived attribute signals (e.g., gender presentation, skin tone, and age) and benchmarks enabled by these datasets. Typically labels for these tasks come from human annotators. However, annotating attribute signals, especially skin tone, is a difficult and subjective task. Perceived skin tone is affected by technical factors, like lighting conditions, and social factors that shape an annotator's lived experience. This paper examines the subjectivity of skin tone annotation through a series of annotation experiments using the Monk Skin Tone (MST) scale, a small pool of professional photographers, and a much larger pool of trained crowdsourced annotators. Along with this study we release the Monk Skin Tone Examples (MST-E) dataset, containing 1515 images and 31 videos spread across the full MST scale. MST-E is designed to help train human annotators to annotate MST effectively. Our study shows that annotators can reliably annotate skin tone in a way that aligns with an expert in the MST scale, even under challenging environmental conditions. We also find evidence that annotators from different geographic regions rely on different mental models of MST categories resulting in annotations that systematically vary across regions. Given this, we advise practitioners to use a diverse set of annotators and a higher replication count for each image when annotating skin tone for fairness research.
format Preprint
id arxiv_https___arxiv_org_abs_2305_09073
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Consensus and Subjectivity of Skin Tone Annotation for ML Fairness
Schumann, Candice
Olanubi, Gbolahan O.
Wright, Auriel
Monk Jr., Ellis
Heldreth, Courtney
Ricco, Susanna
Computer Vision and Pattern Recognition
Computers and Society
Understanding different human attributes and how they affect model behavior may become a standard need for all model creation and usage, from traditional computer vision tasks to the newest multimodal generative AI systems. In computer vision specifically, we have relied on datasets augmented with perceived attribute signals (e.g., gender presentation, skin tone, and age) and benchmarks enabled by these datasets. Typically labels for these tasks come from human annotators. However, annotating attribute signals, especially skin tone, is a difficult and subjective task. Perceived skin tone is affected by technical factors, like lighting conditions, and social factors that shape an annotator's lived experience. This paper examines the subjectivity of skin tone annotation through a series of annotation experiments using the Monk Skin Tone (MST) scale, a small pool of professional photographers, and a much larger pool of trained crowdsourced annotators. Along with this study we release the Monk Skin Tone Examples (MST-E) dataset, containing 1515 images and 31 videos spread across the full MST scale. MST-E is designed to help train human annotators to annotate MST effectively. Our study shows that annotators can reliably annotate skin tone in a way that aligns with an expert in the MST scale, even under challenging environmental conditions. We also find evidence that annotators from different geographic regions rely on different mental models of MST categories resulting in annotations that systematically vary across regions. Given this, we advise practitioners to use a diverse set of annotators and a higher replication count for each image when annotating skin tone for fairness research.
title Consensus and Subjectivity of Skin Tone Annotation for ML Fairness
topic Computer Vision and Pattern Recognition
Computers and Society
url https://arxiv.org/abs/2305.09073