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Survey of Image Based Graph Neural Networks

2021-06-11 10:56:43
Usman Nazir, He Wang, Murtaza Taj

Abstract

In this survey paper, we analyze image based graph neural networks and propose a three-step classification approach. We first convert the image into superpixels using the Quickshift algorithm so as to reduce 30% of the input data. The superpixels are subsequently used to generate a region adjacency graph. Finally, the graph is passed through a state-of-art graph convolutional neural network to get classification scores. We also analyze the spatial and spectral convolution filtering techniques in graph neural networks. Spectral-based models perform better than spatial-based models and classical CNN with lesser compute cost.

Abstract (translated)

URL

https://arxiv.org/abs/2106.06307

PDF

https://arxiv.org/pdf/2106.06307.pdf


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