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Main Authors: Ducru, Pablo, Raiman, Jonathan, Lemos, Ronaldo, Garner, Clay, He, George, Balcha, Hanna, Souto, Gabriel, Branco, Sergio, Bottino, Celina
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2406.11857
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author Ducru, Pablo
Raiman, Jonathan
Lemos, Ronaldo
Garner, Clay
He, George
Balcha, Hanna
Souto, Gabriel
Branco, Sergio
Bottino, Celina
author_facet Ducru, Pablo
Raiman, Jonathan
Lemos, Ronaldo
Garner, Clay
He, George
Balcha, Hanna
Souto, Gabriel
Branco, Sergio
Bottino, Celina
contents This article investigates how AI-generated content can disrupt central revenue streams of the creative industries, in particular the collection of dividends from intellectual property (IP) rights. It reviews the IP and copyright questions related to the input and output of generative AI systems. A systematic method is proposed to assess whether AI-generated outputs, especially images, infringe previous copyrights, using a similarity metric (CLIP) between images against historical copyright rulings. An examination (economic and technical feasibility) of previously proposed compensation frameworks reveals their financial implications for creatives and IP holders. Lastly, we propose a novel IP framework for compensation of artists and IP holders based on their published "licensed AIs" as a new medium and asset from which to collect AI royalties.
format Preprint
id arxiv_https___arxiv_org_abs_2406_11857
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle AI Royalties -- an IP Framework to Compensate Artists & IP Holders for AI-Generated Content
Ducru, Pablo
Raiman, Jonathan
Lemos, Ronaldo
Garner, Clay
He, George
Balcha, Hanna
Souto, Gabriel
Branco, Sergio
Bottino, Celina
Computers and Society
Artificial Intelligence
This article investigates how AI-generated content can disrupt central revenue streams of the creative industries, in particular the collection of dividends from intellectual property (IP) rights. It reviews the IP and copyright questions related to the input and output of generative AI systems. A systematic method is proposed to assess whether AI-generated outputs, especially images, infringe previous copyrights, using a similarity metric (CLIP) between images against historical copyright rulings. An examination (economic and technical feasibility) of previously proposed compensation frameworks reveals their financial implications for creatives and IP holders. Lastly, we propose a novel IP framework for compensation of artists and IP holders based on their published "licensed AIs" as a new medium and asset from which to collect AI royalties.
title AI Royalties -- an IP Framework to Compensate Artists & IP Holders for AI-Generated Content
topic Computers and Society
Artificial Intelligence
url https://arxiv.org/abs/2406.11857