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首页> 外文期刊>ACM Transactions on Graphics >The Face of Art: Landmark Detection and Geometric Style in Portraits
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The Face of Art: Landmark Detection and Geometric Style in Portraits

机译:艺术的面孔:人像的地标检测和几何风格

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摘要

Facial Landmark detection in natural images is a very active research domain. Impressive progress has been made in recent years, with the rise of neural-network based methods and large-scale datasets. However, it is still a challenging and largely unexplored problem in the artistic portraits domain. Compared to natural face images, artistic portraits are much more diverse. They contain a much wider style variation in both geometry and texture and are more complex to analyze. Moreover, datasets that are necessary to train neural networks are unavailable.We propose a method for artistic augmentation of natural face images that enables training deep neural networks for landmark detection in artistic portraits. We utilize conventional facial landmarks datasets, and transform their content from natural images into "artistic face" images. In addition, we use a feature-based landmark correction step, to reduce the dependency between the different facial features, which is necessary due to position and shape variations of facial landmarks in artworks. To evaluate our landmark detection framework, we created an "Artistic-Faces" dataset, containing 160 artworks of various art genres, artists and styles, with a large variation in both geometry and texture. Using our method, we can detect facial features in artistic portraits and analyze their geometric style. This allows the definition of signatures for artistic styles of artworks and artists, that encode both the geometry and the texture style. It also allows us to present a geometric-aware style transfer method for portraits.
机译:自然图像中的人脸地标检测是一个非常活跃的研究领域。近年来,随着基于神经网络的方法和大规模数据集的兴起,取得了令人印象深刻的进步。然而,在艺术肖像领域中,这仍然是一个具有挑战性且尚未开发的问题。与自然人脸图像相比,艺术肖像更加多样化。它们在几何形状和纹理上都包含更广泛的样式变化,并且分析起来更加复杂。此外,还缺少训练神经网络所需的数据集。我们提出了一种用于自然人脸图像艺术增强的方法,该方法可以训练深度神经网络以在艺术人像中进行界标检测。我们利用常规的面部地标数据集,并将其内容从自然图像转换为“艺术面部”图像。此外,我们使用基于特征的地标校正步骤,以减少不同面部特征之间的依赖性,这是由于艺术品中面部地标的位置和形状变化所必需的。为了评估我们的地标检测框架,我们创建了一个“ Artistic-Faces”数据集,其中包含160种具有不同艺术流派,艺术家和风格的艺术品,其几何形状和纹理都有很大的差异。使用我们的方法,我们可以检测艺术肖像中的面部特征并分析其几何风格。这允许定义艺术品和艺术家的艺术风格的签名,该签名同时编码几何形状和纹理样式。它也使我们能够提出肖像的几何感知风格转移方法。

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