Artographer: a Curatorial Interface for Art Space Exploration
By: Shm Garanganao Almeda , John Joon Young Chung , Bjoern Hartmann and more
Potential Business Impact:
Helps you find art connections on a visual map.
Relating a piece to previously established works is crucial in creating and engaging with art, but AI interfaces tend to obscure such relationships, rather than helping users explore them. Embedding models present new opportunities to support discovering and relating artwork through spatial interaction. We built Artographer, an art exploration system featuring a zoomable 2-D map, constructed from the similarity-clustered embeddings of 15,000+ historical artworks. Using Artographer as a probe to investigate spatial artwork exploration, we analyzed how 20 participants (including 9 art history scholars) traversed the map, during a goal-driven task and when freely exploring. We observe divergent and convergent exploration behaviors (Jumping, Wandering, Fixation, Revisiting) and identify values enacted by spatial art-finding (Visibility, Agency, Serendipity, Friction.) We situate spatial maps within a space of Curatorial Interfaces, systems that select and present artworks, and discuss centering pluralism and agency in the design of more responsible AI systems for art curation.
Similar Papers
Holo-Artisan: A Personalized Multi-User Holographic Experience for Virtual Museums on the Edge Intelligence
Multimedia
Makes art in museums talk to you.
Aesthetic Experience and Educational Value in Co-creating Art with Generative AI: Evidence from a Survey of Young Learners
Computers and Society
Teaches kids to create art with AI.
Knowledge Graph for Intelligent Generation of Artistic Image Creation: Constructing a New Annotation Hierarchy
Human-Computer Interaction
Organizes art knowledge for AI to understand.