Perceptual Intelligence Lab, Delft University of Technology, Delft, The Netherlands.
Computer Science Department, Cornell University, Ithaca, New York, United States of America.
PLoS One. 2021 Aug 26;16(8):e0255109. doi: 10.1371/journal.pone.0255109. eCollection 2021.
In this paper, we capture and explore the painterly depictions of materials to enable the study of depiction and perception of materials through the artists' eye. We annotated a dataset of 19k paintings with 200k+ bounding boxes from which polygon segments were automatically extracted. Each bounding box was assigned a coarse material label (e.g., fabric) and half was also assigned a fine-grained label (e.g., velvety, silky). The dataset in its entirety is available for browsing and downloading at materialsinpaintings.tudelft.nl. We demonstrate the cross-disciplinary utility of our dataset by presenting novel findings across human perception, art history and, computer vision. Our experiments include a demonstration of how painters create convincing depictions using a stylized approach. We further provide an analysis of the spatial and probabilistic distributions of materials depicted in paintings, in which we for example show that strong patterns exists for material presence and location. Furthermore, we demonstrate how paintings could be used to build more robust computer vision classifiers by learning a more perceptually relevant feature representation. Additionally, we demonstrate that training classifiers on paintings could be used to uncover hidden perceptual cues by visualizing the features used by the classifiers. We conclude that our dataset of painterly material depictions is a rich source for gaining insights into the depiction and perception of materials across multiple disciplines and hope that the release of this dataset will drive multidisciplinary research.
在本文中,我们捕捉并探索了绘画材料的表现形式,以通过艺术家的视角研究对材料的表现和感知。我们对一个包含 19k 幅画作的数据集进行了注释,其中包含 200k+个边界框,这些边界框自动提取出了多边形片段。每个边界框都被分配了一个粗粒度的材料标签(例如,织物),其中一半还被分配了一个细粒度的标签(例如,天鹅绒般的、丝滑的)。该数据集的全部内容可在 materialsinpaintings.tudelft.nl 上浏览和下载。我们通过在人类感知、艺术史和计算机视觉等跨学科领域展示新的发现,展示了我们数据集的跨学科实用性。我们的实验包括演示画家如何使用风格化的方法来创造逼真的表现形式。我们还对绘画中所描绘的材料的空间和概率分布进行了分析,例如,我们展示了材料存在和位置存在很强的模式。此外,我们还展示了如何通过学习更具感知相关性的特征表示来利用绘画来构建更强大的计算机视觉分类器。此外,我们还证明了通过可视化分类器使用的特征,可以在绘画上训练分类器来揭示隐藏的感知线索。我们得出结论,我们的绘画材料表现数据集是深入了解多个学科领域对材料的表现和感知的丰富资源,希望该数据集的发布将推动跨学科研究。