An Art-centric perspective on AI-based content moderation of nudity
Authors: Riccio, P. , Curto, G. , Hofmann, T. , Oliver, N.
External link: https://sites.google.com/view/ai4vaeccv2024
Publication: Artificial Intelligence for Visual Arts (AI4VA) workshop at ECCV, 2024
At a time when the influence of generative Artificial Intelligence on visual arts is a highly debated topic, we raise the attention towards a more subtle phenomenon: the algorithmic censorship of artistic nudity online. We analyze the performance of three “Not-Safe-For-Work’’ image classifiers on artistic nudity, and empirically uncover the existence of a gender and a stylistic bias, as well as evident technical limitations, especially when only considering visual information. Hence, we propose a multi-modal zero-shot classification approach that improves artistic nudity classification. From our research, we draw several implications that we hope will inform future research on this topic.