The Focus-Aspect-Value Model for Explainable Prediction of Subjective Visual Interpretation
T. Karayil, P. Blandfort, J. Hees, A. Dengel
Abstract
We propose the Focus-Aspect-Value (FAV) model to structure the process of capturing subjectivity in image processing, and introduce a novel dataset following this way of modeling. We find that incorporating context information based on tensor multiplication outperforms the default way of information fusion (concatenation).
Abstract
Subjective visual interpretation is a challenging yet important topic in computer vision. Many approaches reduce this problem to the prediction of adjective- or attribute-labels from images. However, most of these do not take attribute semantics into account, or only process the image in a holistic manner. Furthermore, there is a lack of relevant datasets with fine-grained subjective labels.
The FAV Model
In this paper, we propose the Focus-Aspect-Value (FAV) model to structure the process of capturing subjectivity in image processing, and introduce a novel dataset following this way of modeling.
Results
We run experiments on this dataset to compare several deep learning methods and find that incorporating context information based on tensor multiplication outperforms the default way of information fusion (concatenation).