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Tackling Data Bias in Painting Classification with Style Transfer

Vijendran, Mridula; Li, Frederick W.B.; Shum, Hubert P.H.

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Abstract

It is difficult to train classifiers on paintings collections due to model bias from domain gaps and data bias from the uneven distribution of artistic styles. Previous techniques like data distillation, traditional data augmentation and style transfer improve classifier training using task specific training datasets or domain adaptation. We propose a system to handle data bias in small paintings datasets like the Kaokore dataset while simultaneously accounting for domain adaptation in fine-tuning a model trained on real world images. Our system consists of two stages which are style transfer and classification. In the style transfer stage, we generate the stylized training samples per class with uniformly sampled content and style images and train the style transformation network per domain. In the classification stage, we can interpret the effectiveness of the style and content layers at the attention layers when training on the original training dataset and the stylized images. We can tradeoff the model performance and convergence by dynamically varying the proportion of augmented samples in the majority and minority classes. We achieve comparable results to the SOTA with fewer training epochs and a classifier with fewer training parameters.

Citation

Vijendran, M., Li, F. W., & Shum, H. P. (2023). Tackling Data Bias in Painting Classification with Style Transfer. In Proceedings of the 18th International Joint Conference on Computer Vision, Imaging and Computer Graphics Theory and Applications - Volume 5 VISAPP: VISAPP (250-261). https://doi.org/10.5220/0011776600003417

Conference Name VISAPP '23: 2023 International Conference on Computer Vision Theory and Applications
Conference Location Lisbon, Portugal
Start Date Feb 19, 2023
End Date Feb 21, 2023
Acceptance Date Dec 22, 2022
Publication Date 2023
Deposit Date Jan 6, 2023
Publicly Available Date Jan 6, 2023
Volume 5
Pages 250-261
Series ISSN 2184-4321
Book Title Proceedings of the 18th International Joint Conference on Computer Vision, Imaging and Computer Graphics Theory and Applications - Volume 5 VISAPP: VISAPP
ISBN 9789897586347
DOI https://doi.org/10.5220/0011776600003417
Public URL https://durham-repository.worktribe.com/output/1134273

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