TL;DR
This paper introduces a hybrid deep learning model that combines CNNs and GNNs to incorporate superpixel relational information, improving image classification performance across diverse datasets.
Contribution
It presents a novel hybrid CNN-GNN architecture that leverages superpixel relational data for enhanced image classification accuracy.
Findings
Relational superpixel information improves classification performance.
The hybrid model outperforms standard CNNs on multiple datasets.
Incorporating higher-order spatial relations benefits vision models.
Abstract
Superpixels are higher-order perceptual groups of pixels in an image, often carrying much more information than the raw pixels. There is an inherent relational structure to the relationship among different superpixels of an image such as adjacent superpixels are neighbours of each other. Our interest here is to treat these relative positions of various superpixels as relational information of an image. This relational information can convey higher-order spatial information about the image, such as the relationship between superpixels representing two eyes in an image of a cat. That is, two eyes are placed adjacent to each other in a straight line or the mouth is below the nose. Our motive in this paper is to assist computer vision models, specifically those based on Deep Neural Networks (DNNs), by incorporating this higher-order information from superpixels. We construct a hybrid model…
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Taxonomy
MethodsGraph Neural Network
