Artwork Style Recognition Using Vision Transformers and MLP Mixer

Iliadis, Lazaros and Nikolaidis, Spyridon and Sarigiannidis, Panagiotis and Wan, Shaohua and Goudos, Sotirios (2021) Artwork Style Recognition Using Vision Transformers and MLP Mixer. Technologies, 10 (1). p. 2. ISSN 2227-7080

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Abstract

Through the extensive study of transformers, attention mechanisms have emerged as potentially more powerful than sequential recurrent processing and convolution. In this realm, Vision Transformers have gained much research interest, since their architecture changes the dominant paradigm in Computer Vision. An interesting and difficult task in this field is the classification of artwork styles, since the artistic style of a painting is a descriptor that captures rich information about the painting. In this paper, two different Deep Learning architectures—Vision Transformer and MLP Mixer (Multi-layer Perceptron Mixer)—are trained from scratch in the task of artwork style recognition, achieving over 39% prediction accuracy for 21 style classes on the WikiArt paintings dataset. In addition, a comparative study between the most common optimizers was conducted obtaining useful information for future studies.

Item Type: Article
Subjects: Academic Digital Library > Multidisciplinary
Depositing User: Unnamed user with email info@academicdigitallibrary.org
Date Deposited: 18 Mar 2023 08:00
Last Modified: 24 Jul 2024 09:04
URI: http://publications.article4sub.com/id/eprint/994

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