PSGR: Pixel-wise Sparse Graph Reasoning for COVID-19 Pneumonia
Segmentation in CT Images
- URL: http://arxiv.org/abs/2108.03809v1
- Date: Mon, 9 Aug 2021 04:58:23 GMT
- Title: PSGR: Pixel-wise Sparse Graph Reasoning for COVID-19 Pneumonia
Segmentation in CT Images
- Authors: Haozhe Jia, Haoteng Tang, Guixiang Ma, Weidong Cai, Heng Huang, Liang
Zhan, Yong Xia
- Abstract summary: We propose a pixel-wise sparse graph reasoning (PSGR) module to enhance the modeling of long-range dependencies for COVID-19 infected region segmentation in CT images.
The PSGR module avoids imprecise pixel-to-node projections and preserves the inherent information of each pixel for global reasoning.
The solution has been evaluated against four widely-used segmentation models on three public datasets.
- Score: 83.26057031236965
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Automated and accurate segmentation of the infected regions in computed
tomography (CT) images is critical for the prediction of the pathological stage
and treatment response of COVID-19. Several deep convolutional neural networks
(DCNNs) have been designed for this task, whose performance, however, tends to
be suppressed by their limited local receptive fields and insufficient global
reasoning ability. In this paper, we propose a pixel-wise sparse graph
reasoning (PSGR) module and insert it into a segmentation network to enhance
the modeling of long-range dependencies for COVID-19 infected region
segmentation in CT images. In the PSGR module, a graph is first constructed by
projecting each pixel on a node based on the features produced by the
segmentation backbone, and then converted into a sparsely-connected graph by
keeping only K strongest connections to each uncertain pixel. The long-range
information reasoning is performed on the sparsely-connected graph to generate
enhanced features. The advantages of this module are two-fold: (1) the
pixel-wise mapping strategy not only avoids imprecise pixel-to-node projections
but also preserves the inherent information of each pixel for global reasoning;
and (2) the sparsely-connected graph construction results in effective
information retrieval and reduction of the noise propagation. The proposed
solution has been evaluated against four widely-used segmentation models on
three public datasets. The results show that the segmentation model equipped
with our PSGR module can effectively segment COVID-19 infected regions in CT
images, outperforming all other competing models.
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