Synergy of Machine and Deep Learning Models for Multi-Painter
Recognition
- URL: http://arxiv.org/abs/2304.14773v1
- Date: Fri, 28 Apr 2023 11:34:53 GMT
- Title: Synergy of Machine and Deep Learning Models for Multi-Painter
Recognition
- Authors: Vassilis Lyberatos, Paraskevi-Antonia Theofilou, Jason Liartis and
Georgios Siolas
- Abstract summary: We introduce a new large dataset for painting recognition task including 62 artists achieving good results.
RegNet performs better in exporting features, while SVM makes the best classification of images based on the painter with a performance of up to 85%.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The growing availability of digitized art collections has created the need to
manage, analyze and categorize large amounts of data related to abstract
concepts, highlighting a demanding problem of computer science and leading to
new research perspectives. Advances in artificial intelligence and neural
networks provide the right tools for this challenge. The analysis of artworks
to extract features useful in certain works is at the heart of the era. In the
present work, we approach the problem of painter recognition in a set of
digitized paintings, derived from the WikiArt repository, using transfer
learning to extract the appropriate features and classical machine learning
methods to evaluate the result. Through the testing of various models and their
fine tuning we came to the conclusion that RegNet performs better in exporting
features, while SVM makes the best classification of images based on the
painter with a performance of up to 85%. Also, we introduced a new large
dataset for painting recognition task including 62 artists achieving good
results.
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