Study and Analysis of Visual Saliency Applications Using Graph Neural Networks

Author:

Dhara Gayathri1,Kumar Ravi Kant1

Affiliation:

1. SRM University, India

Abstract

GNNs (graph neural networks) are deep learning algorithms that operate on graphs. A graph's unique ability to capture structural relationships among data gives insight into more information rather than by analyzing data in isolation. GNNs have numerous applications in different areas, including computer vision. In this chapter, the authors want to investigate the application of graph neural networks (GNNs) to common computer vision problems, specifically on visual saliency, salient object detection, and co-saliency. A thorough overview of numerous visual saliency problems that have been resolved using graph neural networks are studied in this chapter. The different research approaches that used GNN to find saliency and co-saliency between objects are also analyzed.

Publisher

IGI Global

Reference109 articles.

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3. Bao, H., Dong, L., Piao, S., & Wei, F. (2021). Beit: Bert pre-training of image transformers. arXiv preprint arXiv:2106.08254.

4. A Deeper Look at Saliency: Feature Contrast, Semantics, and Beyond

5. Research on Airplane and Ship Detection of Aerial Remote Sensing Images Based on Convolutional Neural Network

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