Okay, here’s a breakdown of the key takeaways from the provided text, focusing on the core argument and supporting details. I’ll organize it into sections for clarity.
Core Argument:
Off-the-shelf (general-purpose) AI image generation models pose a notable intellectual property (IP) risk for professional creators and studios. These models are “haunted” by the data they were trained on, meaning they readily reproduce existing copyrighted characters and designs, making them unsuitable for professional production. The article advocates for a different approach to generative AI in publishing – one that prioritizes control over training data and avoids this inherent contamination.
Key Supporting Points:
Widespread IP Contamination: The article presents evidence from “IP Risk Audits” (IRAs) conducted by 2nd Set AI,demonstrating that popular characters across various genres (shonen,shojo,seinen) are easily replicated by AI models.This isn’t limited to older characters; newer, popular characters are also highly susceptible to replication.
Examples of High-Risk Characters:
Monkey D. Luffy (One Piece)
Son Goku (Dragon Ball)
Naruto Uzumaki
Edward Elric (Fullmetal Alchemist)
Izuku “Deku” Midoriya (My hero Academia)
Yuji Itadori (Jujutsu Kaisen)
Tanjiro Kamado (Demon Slayer)
Usagi Tsukino (Sailor Moon)
Motoko Kusanagi (Ghost in the Shell)
David Martinez (Cyberpunk: Edgerunners)
Mori Calliope (VTuber)
Genre Agnostic: The problem isn’t limited to a specific genre or target audience. AI can replicate characters from shonen, shojo, and seinen manga/anime with similar ease.
Cross-Media Infringement: The contamination extends to characters originating from various media formats (anime, video games, VTubing), highlighting the broad scope of the issue.
two Primary Reasons Why Off-the-Shelf AI Fails Professional Creators:
Fan Art Contamination: Models are trained on fan art, which introduces inconsistencies and non-canonical interpretations of characters, leading to brand dilution. The AI doesn’t understand the “official” version.
Character Design Evolution: Characters change over time. Public models blend all versions of a character together, resulting in a generic, inaccurate representation that isn’t useful for maintaining a consistent brand identity.
* A Better Path: The article implies that a solution lies in controlling the training data used for AI models,ensuring it consists only of authorized and consistent assets. (The image caption hints at 2nd Set AI’s approach to this.)
In essence, the article is a warning to the animation and publishing industries about the hidden risks of using readily available AI tools without careful consideration of IP rights and brand consistency. It positions 2nd set AI as a provider of solutions to mitigate these risks.
