基准非逼真的肖像渲染

Paul L. Rosin, D. Mould, Itamar Berger, J. Collomosse, Yu-Kun Lai, Chuan Li, Hua Li, Ariel Shamir, Michael Wand, T. Wang, H. Winnemöller
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引用次数: 20

摘要

我们提供了一组图像,以帮助NPR从业者评估他们基于图像的肖像风格化算法。使用标准集既便于与其他方法进行比较,又有助于确保所呈现的结果具有代表性。我们给出了两个难度级别,每个级别由系统选择的20个图像组成,以便提供几个可能的肖像特征的良好覆盖。我们将三种现有的特定于肖像的风格化算法、两种通用的风格化算法和一种基于学习的通用风格化算法应用于基准的第一级,对应于经常在特定于肖像的工作中使用的约束图像的类型。我们发现,现有的方法在这个新的图像集上通常是有效的,这表明一级基准是可处理的;挑战仍然是第二级。结果显示,与通用算法相比,特定于肖像的算法具有几个优势:特定于肖像的算法可以使用特定于领域的信息来保留关键细节,如眼睛,并消除无关的细节,并且由于潜在的面部模型,它们有更多的语义上有意义的抽象空间。最后,我们提供了一些关于系统地将基准扩展到更高难度水平的想法。
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Benchmarking non-photorealistic rendering of portraits
We present a set of images for helping NPR practitioners evaluate their image-based portrait stylisation algorithms. Using a standard set both facilitates comparisons with other methods and helps ensure that presented results are representative. We give two levels of difficulty, each consisting of 20 images selected systematically so as to provide good coverage of several possible portrait characteristics. We applied three existing portrait-specific stylisation algorithms, two general-purpose stylisation algorithms, and one general learning based stylisation algorithm to the first level of the benchmark, corresponding to the type of constrained images that have often been used in portrait-specific work. We found that the existing methods are generally effective on this new image set, demonstrating that level one of the benchmark is tractable; challenges remain at level two. Results revealed several advantages conferred by portrait-specific algorithms over general-purpose algorithms: portrait-specific algorithms can use domain-specific information to preserve key details such as eyes and to eliminate extraneous details, and they have more scope for semantically meaningful abstraction due to the underlying face model. Finally, we provide some thoughts on systematically extending the benchmark to higher levels of difficulty.
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