JSAI2023

Presentation information

Poster Session

General Session » Poster session

[3Xin4] Poster session 1

Thu. Jun 8, 2023 1:30 PM - 3:10 PM Room X (Exhibition hall B)

[3Xin4-30] A Deep Learning Approach to Quantitative Analysis of Traditional Japanese Artworks: Exploring the Latent Features of Ukiyo-e

〇Shinichi Honna1, Akira Matsui1 (1.Yokohama National University)

Keywords:Art, Ukiyo-e, Deep Learning

This study quantitatively investigates ukiyo-e, a traditional Japanese artwork, and extracts the latent features of artworks using a deep learning model. We employ a deep learning model to extract the latent features of more than 9,000 ukiyo-e artworks, utilizing the VGG models and examining the model's layers to identify the characteristics of representative ukiyo-e artists. With the obtained model, we conduct a within-artist study to capture the transition of artists’ styles of each artist to understand the career trajectory of Ukiyo-e artists according to their school or popularity. While most previous studies focus on the part of the artwork, such as the faces of the portrait, our study aims to deliver a holistic study of ukiyo-e artwork based on the whole of the images, including backgrounds. Through this holistic study, we aim to advance the quantitative measurement of traditional artworks in Japan.

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