Litcius/Paper detail

ALADIN: All Layer Adaptive Instance Normalization for Fine-grained Style Similarity

Dan Ruta, Saeid Motiian, Baldo Faieta, Zhe Lin, Hailin Jin, Alex Filipkowski, Andrew Gilbert, John Collomosse

20212021 IEEE/CVF International Conference on Computer Vision (ICCV)38 citationsDOI

Abstract

We present ALADIN (All Layer AdaIN); a novel architecture for searching images based on the similarity of their artistic style. Representation learning is critical to visual search, where distance in the learned search embedding reflects image similarity. Learning an embedding that discriminates fine-grained variations in style is hard, due to the difficulty of defining and labelling style. ALADIN takes a weakly supervised approach to learning a representation for fine-grained style similarity of digital artworks, leveraging BAM-FG, a novel large-scale dataset of user generated content groupings gathered from the web. ALADIN sets a new state of the art accuracy for style-based visual search over both coarse labelled style data (BAM) and BAM-FG; a new 2.62 million image dataset of 310,000 fine-grained style groupings also contributed by this work.

Topics & Concepts

Similarity (geometry)Computer scienceNormalization (sociology)Style (visual arts)Artificial intelligenceEmbeddingRepresentation (politics)Training setFeature learningPattern recognition (psychology)Natural language processingImage (mathematics)ArtLawSociologyLiteraturePoliticsAnthropologyPolitical scienceGenerative Adversarial Networks and Image SynthesisAesthetic Perception and AnalysisImage Retrieval and Classification Techniques