4.2 Article

Artificial Intelligence from Colonial India: Race, Statistics, and Facial Recognition in the Global South

Journal

SCIENCE TECHNOLOGY & HUMAN VALUES
Volume 48, Issue 3, Pages 663-689

Publisher

SAGE PUBLICATIONS INC
DOI: 10.1177/01622439211060839

Keywords

artificial intelligence; statistics; India; biometrics; facial recognition; race; Mahalanobis

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This article explores the history of the Mahalanobis Distance Function and its transition from colonial India to contemporary artificial intelligence technologies. The function was initially created to address the issues of caste and ethnic classification in colonial India but has since become a technical standard and racialized technique in machine learning applications.
This article examines the history of a similarity measure-the Mahalanobis Distance Function-and its movement from colonial India into contemporary artificial intelligence technologies, including facial recognition, and its reapplication into postcolonial India. The article identifies how the creation of the Distance Function was connected to the colonial problem of caste and ethnic classification for British bureaucracy in 1920-1930s India. This article demonstrates that the Distance Function is a statistical method, originating to make anthropometric caste distinctions in India, that became both a technical standard and a mobile racialized technique, utilized in machine learning applications. The creation of the Distance Function as a measure of similitude at a particular period of colonial state-making helped to model wider categories of classification which have proliferated in facial recognition technology. Overall, we highlight how a measurement function that operates in recognition technologies today can be traced across time and space to other racialized contexts.

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