Learning of Art Style Using AI and Its Evaluation Based on Psychological
Experiments
- URL: http://arxiv.org/abs/2005.02220v1
- Date: Mon, 4 May 2020 07:19:37 GMT
- Title: Learning of Art Style Using AI and Its Evaluation Based on Psychological
Experiments
- Authors: Mai Cong Hung, Ryohei Nakatsu, Naoko Tosa, Takashi Kusumi, Koji
Koyamada
- Abstract summary: GANs (Generative adversarial networks) is a new AI technology that can perform deep learning with less training data.
We have carried out a comparison between several art sets with different art style using GAN.
- Score: 1.0499611180329802
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: GANs (Generative adversarial networks) is a new AI technology that can
perform deep learning with less training data and has the capability of
achieving transformation between two image sets. Using GAN we have carried out
a comparison between several art sets with different art style. We have
prepared several image sets; a flower photo set (A), an art image set (B1) of
Impressionism drawings, an art image set of abstract paintings (B2), an art
image set of Chinese figurative paintings, (B3), and an art image set of
abstract images (B4) created by Naoko Tosa, one of the authors. Transformation
between set A to each of B was carried out using GAN and four image sets (B1,
B2, B3, B4) was obtained. Using these four image sets we have carried out
psychological experiment by asking subjects consisting of 23 students to fill
in questionnaires. By analyzing the obtained questionnaires, we have found the
followings. Abstract drawings and figurative drawings are clearly judged to be
different. Figurative drawings in West and East were judged to be similar.
Abstract images by Naoko Tosa were judged as similar to Western abstract
images. These results show that AI could be used as an analysis tool to reveal
differences between art genres.
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