The field of neural style transfer has experienced a surge of research exploring different avenues ranging from optimization-based approaches and feed-forward models to meta-learning methods. The developed techniques have not just progressed the field of style transfer, but also led to breakthroughs in other areas of computer vision, such as all of visual synthesis. However, whereas quantitative evaluation and benchmarking have become pillars of computer vision research, the reproducible, quantitative assessment of style transfer models is still lacking. Even in comparison to other fields of visual synthesis, where widely used metrics exist, the quantitative evaluation of style transfer is still lagging behind. To support the automatic comparison of different style transfer approaches and to study their respective strengths and weaknesses, the field would greatly benefit from a quantitative measurement of stylization performance. Therefore, we propose a method to complement the currently mostly qualitative evaluation schemes. We provide extensive evaluations and a large-scale user study to show that the proposed metric strongly coincides with human judgment.
翻译:神经风格转让领域经历了大量研究,探索了从优化方式和进料推进模式到元学习方法等不同途径,探索了从优化方式和进料推进模式到元化学习方法等不同途径,先进技术不仅在风格转让领域取得了进展,而且还在计算机愿景的其他领域(如所有视觉合成)取得了突破,然而,虽然定量评价和基准已经成为计算机愿景研究的支柱,但对风格转让模式的可复制和定量评估仍然缺乏。即使与其他视觉合成领域(即广泛使用的指标)相比,对风格转让的定量评价仍然落后。为了支持对不同风格转让方法进行自动比较并研究各自的优缺点,该领域将大大受益于对标准化绩效的定量衡量。因此,我们提出了一种补充目前主要是定性的评价计划的方法。我们提供了广泛的评价和大规模用户研究,以表明拟议指标与人类判断非常吻合。