Detection of Emotions in Artworks Using a Convolutional Neural Network Trained on Non- Artistic Images: A Methodology to Reduce the Cross-Depiction Problem
Author
González-Martín, César
Carrasco, Miguel
Wachter Wielandt, Thomas Gustavo
Publisher
SAGEDate
2023Subject
EmotionArt
Cross-depiction problem
Deep learning
QuickShift
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Show full item recordAbstract
This research is framed within the study of automatic recognition of emotions in artworks, proposing a methodology to improve performance in detecting emotions when a network is trained with an image type different from the entry type, which is known as the cross-depiction problem. To achieve this, we used the QuickShift algorithm, which simplifies images’ resources, and applied it to the Open Affective Standardized Image (OASIS) dataset as well as the WikiArt Emotion dataset. Both datasets are also unified under a binary emotional system. Subsequently, a model was trained based on a convolutional neural network using OASIS as a learning base, in order to then be applied on the WikiArt Emotion dataset. The results
show an improvement in the general prediction performance when applying QuickShift (73% overall). However, we can observe that artistic style influences the results, with minimalist art being incompatible with the methodology proposed.

