Better Images of AI: A free library for realistic, diverse AI stock imagery
By
Curiositry
Summary
A non-profit initiative called "Better Images of AI" is creating a free, open-licensed library of stock images that depict artificial intelligence in more realistic, diverse, and less clichéd ways than the typical AI imagery found in news and marketing. The article highlights the problem of misleading visual representations of AI and introduces their growing repository as an alternative resource.
Source
Key quotes
· 3 pulledHave you noticed that news stories and marketing material about Artificial Intelligence are typically illustrated with clichéd and misleading images ?
Our library is the start of a new alternative repository of stock images.
They are available for anyone to use for free under CC licences, or just as inspiration for more helpful and diverse representations of AI.
You might also wanna read

AI Image Generators Improve Realism Through Controlled Quality Degradation
AI image generators are improving their ability to create realistic fakes by intentionally degrading image quality slightly, making it harde
Three practical strategies to avoid being misled by AI-generated images
This article discusses the growing problem of AI-generated visual content ("AI slop") that can mislead viewers, using the Met Gala as an exa
theconversation.com·1mo agoAPImage: AI-Powered Image Generation and Editing API Platform
APImage is an AI-powered image API platform that enables users to create, edit, and enhance images with artificial intelligence. The platfor
Yale study proposes copyleft licensing framework to enforce AI model transparency
Yale's Digital Ethics Center researchers propose a Contextual Copyleft AI License (CCAI) that extends copyleft licensing principles to gener

AI-generated scientific images threaten trust in research and academic publishing
This article examines the growing problem of AI-generated scientific images being used to deceive both the public and academic journals. It
Market Design for AI Training Data: Beyond the Copyright Binary
This academic paper analyzes market design challenges for human-generated content used in AI training. It critiques two polar approaches: a

Comments
Sign in to join the conversation.
No comments yet. Be the first.