Accessibility / computer visionaccessibility and computer visionParticipation documented

Humans, AI, and Context: Understanding End-Users’ Trust in a Real-World Computer Vision Application

Princeton, United States

We identified human, AI, and context-related factors of trust, finding that domain knowledge had a particularly big influence on participants’ trust and interaction with AI

participatory designhuman-centered AIproblem formulationevaluationdeployment
Overview
Region
North America
Lead organization
Princeton University, Intel Labs
Organization type
nonprofit + university collaboration
Technology group
computer vision
Activity status
completed
Start year
Not documented
Last updated
Mar 25, 2026
Details
Participation mode
co-design with affected users and domain experts
Participation group
Co Design
Technology description
computer vision
Funding
Not documented
Region of activity
national

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