The applicability of computer vision to real paintings and artworks has been rarely investigated, even though a vast heritage would greatly benefit from techniques which can understand and process data from the artistic domain. This is partially due to the small amount of annotated artistic data, which is not even comparable to that of natural images captured by cameras. In this paper, we propose a semantic-aware architecture which can translate artworks to photo-realistic visualizations, thus reducing the gap between visual features of artistic and realistic data. Our architecture can generate natural images by retrieving and learning details from real photos through a similarity matching strategy which leverages a weakly-supervised semantic understanding of the scene. Experimental results show that the proposed technique leads to increased realism and to a reduction in domain shift, which improves the performance of pre-trained architectures for classification, detection, and segmentation. Code is publicly available at: https://github.com/aimagelab/art2real.
Art2Real: Unfolding the Reality of Artworks via Semantically-Aware Image-to-Image Translation / Tomei, Matteo; Cornia, Marcella; Baraldi, Lorenzo; Cucchiara, Rita. - 2019-:(2019), pp. 5842-5852. (Intervento presentato al convegno 32nd IEEE/CVF Conference on Computer Vision and Pattern Recognition, CVPR 2019 tenutosi a Long Beach, CA, USA nel June 16-20 2019) [10.1109/CVPR.2019.00600].
Art2Real: Unfolding the Reality of Artworks via Semantically-Aware Image-to-Image Translation
Tomei, Matteo;Cornia, Marcella;Baraldi, Lorenzo;Cucchiara, Rita
2019
Abstract
The applicability of computer vision to real paintings and artworks has been rarely investigated, even though a vast heritage would greatly benefit from techniques which can understand and process data from the artistic domain. This is partially due to the small amount of annotated artistic data, which is not even comparable to that of natural images captured by cameras. In this paper, we propose a semantic-aware architecture which can translate artworks to photo-realistic visualizations, thus reducing the gap between visual features of artistic and realistic data. Our architecture can generate natural images by retrieving and learning details from real photos through a similarity matching strategy which leverages a weakly-supervised semantic understanding of the scene. Experimental results show that the proposed technique leads to increased realism and to a reduction in domain shift, which improves the performance of pre-trained architectures for classification, detection, and segmentation. Code is publicly available at: https://github.com/aimagelab/art2real.File | Dimensione | Formato | |
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2019-cvpr-art2real.pdf
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