论文标题
NPRPORTRAIT 1.0:一个三级基准,用于肖像的非遗迹渲染
NPRportrait 1.0: A Three-Level Benchmark for Non-Photorealistic Rendering of Portraits
论文作者
论文摘要
尽管最近在基于图像的非遗迹渲染(NPR)(特别是肖像图像样式)中进行活动的活动激增,但由于神经风格转移的出现,该领域的绩效评估状态受到限制,尤其是与计算机视觉和机器学习社区的规范相比。不幸的是,迄今为止,评估图像风格的任务尚未得到很好的定义,因为它涉及主观,感知和审美方面。为了取得解决方案的进展,本文提出了一个新的结构化三级基准数据集,以评估风格化的肖像图像。严格的标准用于其构建,并通过用户研究验证其一致性。此外,已经开发了一种用于评估肖像样式算法的新方法,该方法利用了不同的基准水平以及用户研究提供的有关面部特征的注释。我们使用新的基准数据集对多种图像样式方法(肖像特定和通用方法以及传统的NPR方法和神经风格转移)进行评估。
Despite the recent upsurge of activity in image-based non-photorealistic rendering (NPR), and in particular portrait image stylisation, due to the advent of neural style transfer, the state of performance evaluation in this field is limited, especially compared to the norms in the computer vision and machine learning communities. Unfortunately, the task of evaluating image stylisation is thus far not well defined, since it involves subjective, perceptual and aesthetic aspects. To make progress towards a solution, this paper proposes a new structured, three level, benchmark dataset for the evaluation of stylised portrait images. Rigorous criteria were used for its construction, and its consistency was validated by user studies. Moreover, a new methodology has been developed for evaluating portrait stylisation algorithms, which makes use of the different benchmark levels as well as annotations provided by user studies regarding the characteristics of the faces. We perform evaluation for a wide variety of image stylisation methods (both portrait-specific and general purpose, and also both traditional NPR approaches and neural style transfer) using the new benchmark dataset.