Abstract
We present a novel algorithm for stylizing photographs into portrait paintings comprised of curved brush strokes. Rather than drawing upon a prescribed set of heuristics to place strokes, our system learns a flexible model of artistic style by analyzing training data from a human artist. Given a training pair - A source image and painting of that image-a non-parametric model of style is learned by observing the geometry and tone of brush strokes local to image features. A Markov Random Field (MRF) enforces spatial coherence of style parameters. Style models local to facial features are learned using a semantic segmentation of the input face image, driven by a combination of an Active Shape Model and Graph-cut. We evaluate style transfer between a variety of training and test images, demonstrating a wide gamut of learned brush and shading styles.
Cite
CITATION STYLE
Wang, T., Collomosse, J., Hunter, A., & Greig, D. (2013). Learnable stroke models for example-based portrait painting. In BMVC 2013 - Electronic Proceedings of the British Machine Vision Conference 2013. British Machine Vision Association, BMVA. https://doi.org/10.5244/C.27.36
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