Documenting Computer Vision Datasets - An Invitation to Reflexive Data Practices
Offered By: Association for Computing Machinery (ACM) via YouTube
Course Description
Overview
Explore a thought-provoking conference talk that delves into the critical importance of documenting computer vision datasets and encourages the adoption of reflexive data practices. Presented at the FAccT 2021 virtual conference, this 18-minute research track presentation by M. Miceli, T. Yang, L. Naudts, M. Schuessler, D. Serbanescu, and A. Hanna challenges conventional approaches to dataset creation and management. Gain insights into the ethical considerations and potential biases inherent in computer vision datasets, and discover how proper documentation can lead to more transparent and accountable AI systems. Learn about innovative strategies for implementing reflexive data practices that can enhance the quality and reliability of machine learning models while addressing concerns related to fairness, accountability, and transparency in artificial intelligence.
Syllabus
Documenting Computer Vision Datasets: An Invitation to Reflexive Data Practices
Taught by
ACM FAccT Conference
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