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Learnable Stroke Models for Example-based Portrait Painting

机译:基于实例的人像绘画的可学笔画模型

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摘要

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.
机译:我们提出了一种新颖的算法,用于将照片样式化为包含弯曲笔触的肖像画。我们的系统没有利用一组规定的启发式方法来放置笔画,而是通过分析来自人类艺术家的训练数据来学习灵活的艺术风格模型。给定一个训练对-源图像和该图像的绘画-通过观察图像特征局部的笔触的几何形状和色调来学习样式的非参数模型。马尔可夫随机场(MRF)可以增强样式参数的空间连贯性。使用主动形状模型和图形切割的组合,使用输入面部图像的语义分割来学习局部于面部特征的样式模型。我们评估了各种训练图像和测试图像之间的样式转换,从而展示了广泛的学习笔刷和阴影样式。

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