archetypal style analysis
Unsupervised Learning of Artistic Styles with Archetypal Style Analysis
In this paper, we introduce an unsupervised learning approach to automatically discover, summarize, and manipulate artistic styles from large collections of paintings. Our method is based on archetypal analysis, which is an unsupervised learning technique akin to sparse coding with a geometric interpretation. When applied to deep image representations from a data collection, it learns a dictionary of archetypal styles, which can be easily visualized. After training the model, the style of a new image, which is characterized by local statistics of deep visual features, is approximated by a sparse convex combination of archetypes. This allows us to interpret which archetypal styles are present in the input image, and in which proportion. Finally, our approach allows us to manipulate the coefficients of the latent archetypal decomposition, and achieve various special effects such as style enhancement, transfer, and interpolation between multiple archetypes.
Reviews: Unsupervised Learning of Artistic Styles with Archetypal Style Analysis
The paper presents a novel approach to alter the artistic style of images. This is achieved by combining an unsupervised style transfer method [11] with archetypal analysis [3] to learn style representations of collections of paintings (style images). Archetypes are computed for GanGogh and Vincent van Gogh paintings to learn style characteristics, which allows different stylization effects by changing the latent space of the archetypical representation. Due to the archetypical style representation, style changes remain interpretable. The style transfer is done in a hierarchical fashion similar to [11] by matching the first and second order statistics of the content and style feature maps (introduced as whitening and coloring transformations in [11]).
Unsupervised Learning of Artistic Styles with Archetypal Style Analysis
Wynen, Daan, Schmid, Cordelia, Mairal, Julien
In this paper, we introduce an unsupervised learning approach to automatically dis- cover, summarize, and manipulate artistic styles from large collections of paintings. Our method is based on archetypal analysis, which is an unsupervised learning technique akin to sparse coding with a geometric interpretation. When applied to deep image representations from a data collection, it learns a dictionary of archetypal styles, which can be easily visualized. After training the model, the style of a new image, which is characterized by local statistics of deep visual features, is approximated by a sparse convex combination of archetypes. This allows us to interpret which archetypal styles are present in the input image, and in which proportion.
Unsupervised Learning of Artistic Styles with Archetypal Style Analysis
Wynen, Daan, Schmid, Cordelia, Mairal, Julien
In this paper, we introduce an unsupervised learning approach to automatically discover, summarize, and manipulate artistic styles from large collections of paintings. Our method is based on archetypal analysis, which is an unsupervised learning technique akin to sparse coding with a geometric interpretation. When applied to deep image representations from a collection of artworks, it learns a dictionary of archetypal styles, which can be easily visualized. After training the model, the style of a new image, which is characterized by local statistics of deep visual features, is approximated by a sparse convex combination of archetypes. This enables us to interpret which archetypal styles are present in the input image, and in which proportion. Finally, our approach allows us to manipulate the coefficients of the latent archetypal decomposition, and achieve various special effects such as style enhancement, transfer, and interpolation between multiple archetypes.