The Surveillance AI Pipeline
Pratyusha Ria Kalluri, William Agnew, Myra Cheng, Kentrell Owens, Luca, Soldaini, Abeba Birhane

TL;DR
This paper uncovers the extensive pipeline linking computer vision research to mass surveillance, revealing how research from major institutions has significantly contributed to surveillance technologies over three decades.
Contribution
It provides a comprehensive analysis of over 40,000 documents to reveal the widespread use of computer vision research in surveillance patents and practices.
Findings
Majority of computer vision papers enable human data extraction
Research from elite institutions heavily cited in surveillance patents
Surveillance-related patents increased five-fold from 1990s to 2010s
Abstract
A rapidly growing number of voices argue that AI research, and computer vision in particular, is powering mass surveillance. Yet the direct path from computer vision research to surveillance has remained obscured and difficult to assess. Here, we reveal the Surveillance AI pipeline by analyzing three decades of computer vision research papers and downstream patents, more than 40,000 documents. We find the large majority of annotated computer vision papers and patents self-report their technology enables extracting data about humans. Moreover, the majority of these technologies specifically enable extracting data about human bodies and body parts. We present both quantitative and rich qualitative analysis illuminating these practices of human data extraction. Studying the roots of this pipeline, we find that institutions that prolifically produce computer vision research, namely elite…
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Taxonomy
TopicsEthics and Social Impacts of AI
