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Study mode:
on
1
Intro
2
Face Recognition
3
Synthesis
4
Group Fairness
5
Demographic Parity
6
Fairness is based on groups.
7
Racial Categories: Badly Defined
8
Moment of Identification
9
Scenario 2
10
Classifier Ensemble
11
Cross-Dataset Generalization
12
Stereotypes
13
Conclusions
Description:
Explore a critical analysis of racial categorization in computer vision systems through this 15-minute conference talk presented at FAccT 2021. Delve into the complexities of face recognition technology, examining issues of group fairness, demographic parity, and the problematic nature of racial categories. Investigate the challenges of cross-dataset generalization and the perpetuation of stereotypes in AI systems. Gain insights into the ethical implications and limitations of current approaches to racial classification in machine learning, and consider potential solutions for improving fairness and accuracy in computer vision applications.

One Label, One Billion Faces - Usage and Consistency of Racial Categories in Computer Vision

Association for Computing Machinery (ACM)
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