BCS-Net: Boundary, Context and Semantic for Automatic COVID-19 Lung
Infection Segmentation from CT Images
- URL: http://arxiv.org/abs/2207.08114v1
- Date: Sun, 17 Jul 2022 08:54:07 GMT
- Title: BCS-Net: Boundary, Context and Semantic for Automatic COVID-19 Lung
Infection Segmentation from CT Images
- Authors: Runmin Cong, Haowei Yang, Qiuping Jiang, Wei Gao, Haisheng Li, Cong
Wang, Yao Zhao, and Sam Kwong
- Abstract summary: BCS-Net is a novel network for automatic COVID-19 lung infection segmentation from CT images.
BCS-Net follows an encoder-decoder architecture, and more designs focus on the decoder stage.
In each BCSR block, the attention-guided global context (AGGC) module is designed to learn the most valuable encoder features for decoder.
- Score: 83.82141604007899
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: The spread of COVID-19 has brought a huge disaster to the world, and the
automatic segmentation of infection regions can help doctors to make diagnosis
quickly and reduce workload. However, there are several challenges for the
accurate and complete segmentation, such as the scattered infection area
distribution, complex background noises, and blurred segmentation boundaries.
To this end, in this paper, we propose a novel network for automatic COVID-19
lung infection segmentation from CT images, named BCS-Net, which considers the
boundary, context, and semantic attributes. The BCS-Net follows an
encoder-decoder architecture, and more designs focus on the decoder stage that
includes three progressively Boundary-Context-Semantic Reconstruction (BCSR)
blocks. In each BCSR block, the attention-guided global context (AGGC) module
is designed to learn the most valuable encoder features for decoder by
highlighting the important spatial and boundary locations and modeling the
global context dependence. Besides, a semantic guidance (SG) unit generates the
semantic guidance map to refine the decoder features by aggregating multi-scale
high-level features at the intermediate resolution. Extensive experiments
demonstrate that our proposed framework outperforms the existing competitors
both qualitatively and quantitatively.
Related papers
- BRAU-Net++: U-Shaped Hybrid CNN-Transformer Network for Medical Image Segmentation [11.986549780782724]
We propose a hybrid yet effective CNN-Transformer network, named BRAU-Net++, for an accurate medical image segmentation task.
Specifically, BRAU-Net++ uses bi-level routing attention as the core building block to design our u-shaped encoder-decoder structure.
Our proposed approach surpasses other state-of-the-art methods including its baseline: BRAU-Net.
arXiv Detail & Related papers (2024-01-01T10:49:09Z) - Rethinking Boundary Detection in Deep Learning Models for Medical Image
Segmentation [27.322629156662547]
A novel network architecture, referred to as Convolution, Transformer, and Operator (CTO) is proposed.
CTO employs a combination of Convolutional Neural Networks (CNNs), Vision Transformer (ViT), and an explicit boundary detection operator to achieve high recognition accuracy.
The performance of the proposed method is evaluated on six challenging medical image segmentation datasets.
arXiv Detail & Related papers (2023-05-01T06:13:08Z) - Adaptive Context Selection for Polyp Segmentation [99.9959901908053]
We propose an adaptive context selection based encoder-decoder framework which is composed of Local Context Attention (LCA) module, Global Context Module (GCM) and Adaptive Selection Module (ASM)
LCA modules deliver local context features from encoder layers to decoder layers, enhancing the attention to the hard region which is determined by the prediction map of previous layer.
GCM aims to further explore the global context features and send to the decoder layers. ASM is used for adaptive selection and aggregation of context features through channel-wise attention.
arXiv Detail & Related papers (2023-01-12T04:06:44Z) - Full-scale Deeply Supervised Attention Network for Segmenting COVID-19
Lesions [0.24366811507669117]
We introduce the Full-scale Deeply Supervised Attention Network (FuDSA-Net) for efficient segmentation of corona-infected lung areas in CT images.
The model considers activation responses from all levels of the encoding path, encompassing multi-scalar features acquired at different levels of the network.
Incorporation of the entire gamut of multi-scalar characteristics into the novel attention mechanism helps prioritize the selection of activation responses and locations containing useful information.
arXiv Detail & Related papers (2022-10-27T16:05:47Z) - Recurrent Feature Propagation and Edge Skip-Connections for Automatic
Abdominal Organ Segmentation [13.544665065396373]
We propose a 3D network with four main components trained end-to-end including encoder, edge detector, decoder with edge skip-connections and recurrent feature propagation head.
Experimental results show that the proposed network outperforms several state-of-the-art models.
arXiv Detail & Related papers (2022-01-02T08:33:19Z) - InDuDoNet+: A Model-Driven Interpretable Dual Domain Network for Metal
Artifact Reduction in CT Images [53.4351366246531]
We construct a novel interpretable dual domain network, termed InDuDoNet+, into which CT imaging process is finely embedded.
We analyze the CT values among different tissues, and merge the prior observations into a prior network for our InDuDoNet+, which significantly improve its generalization performance.
arXiv Detail & Related papers (2021-12-23T15:52:37Z) - PSGR: Pixel-wise Sparse Graph Reasoning for COVID-19 Pneumonia
Segmentation in CT Images [83.26057031236965]
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.
arXiv Detail & Related papers (2021-08-09T04:58:23Z) - A Holistically-Guided Decoder for Deep Representation Learning with
Applications to Semantic Segmentation and Object Detection [74.88284082187462]
One common strategy is to adopt dilated convolutions in the backbone networks to extract high-resolution feature maps.
We propose one novel holistically-guided decoder which is introduced to obtain the high-resolution semantic-rich feature maps.
arXiv Detail & Related papers (2020-12-18T10:51:49Z) - Boundary-aware Context Neural Network for Medical Image Segmentation [15.585851505721433]
Medical image segmentation can provide reliable basis for further clinical analysis and disease diagnosis.
Most existing CNNs-based methods produce unsatisfactory segmentation mask without accurate object boundaries.
In this paper, we formulate a boundary-aware context neural network (BA-Net) for 2D medical image segmentation.
arXiv Detail & Related papers (2020-05-03T02:35:49Z) - Inf-Net: Automatic COVID-19 Lung Infection Segmentation from CT Images [152.34988415258988]
Automated detection of lung infections from computed tomography (CT) images offers a great potential to augment the traditional healthcare strategy for tackling COVID-19.
segmenting infected regions from CT slices faces several challenges, including high variation in infection characteristics, and low intensity contrast between infections and normal tissues.
To address these challenges, a novel COVID-19 Deep Lung Infection Network (Inf-Net) is proposed to automatically identify infected regions from chest CT slices.
arXiv Detail & Related papers (2020-04-22T07:30:56Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.