Mosaic Finding Artistic Connections Across Culture With Conditional Image Retrieval | Awesome Learning to Hash Add your paper to Learning2Hash

Mosaic Finding Artistic Connections Across Culture With Conditional Image Retrieval

Hamilton Mark, Fu Stephanie, Lu Mindren, Bui Johnny, Bopp Darius, Chen Zhenbang, Tran Felix, Wang Margaret, Rogers Marina, Zhang Lei, Hoder Chris, Freeman William T.. Arxiv 2020

[Paper]    
ARXIV GAN Image Retrieval

We introduce MosAIc, an interactive web app that allows users to find pairs of semantically related artworks that span different cultures, media, and millennia. To create this application, we introduce Conditional Image Retrieval (CIR) which combines visual similarity search with user supplied filters or “conditions”. This technique allows one to find pairs of similar images that span distinct subsets of the image corpus. We provide a generic way to adapt existing image retrieval data-structures to this new domain and provide theoretical bounds on our approach’s efficiency. To quantify the performance of CIR systems, we introduce new datasets for evaluating CIR methods and show that CIR performs non-parametric style transfer. Finally, we demonstrate that our CIR data-structures can identify “blind spots” in Generative Adversarial Networks (GAN) where they fail to properly model the true data distribution.

Similar Work