Implementation of CS-Net: Channel and Spatial Attention Network for Curvilinear Structure Segmentation
For the details of 3D extended version of CS-Net, please refer to CS2-Net: Deep Learning Segmentation of Curvilinear Structures in Medical Imaging
The main contribution of this work is the publication of two scarce datasets in the medical image field. Plesae click the link below to access the details and source data.
The attention module was implemented based on DANet. The difference between the proposed module and the original block is that we added a new 1x3 and 3x1 kernel convolution layer into spatial attention module. Plese refer to the paper for details.
Using the train.py
and predict.py
to train and test the model on your own dataset, respectively.
@inproceedings{mou2019cs,
title={CS-Net: channel and spatial attention network for curvilinear structure segmentation},
author={Mou, Lei and Zhao, Yitian and Chen, Li and Cheng, Jun and Gu, Zaiwang and Hao, Huaying and Qi, Hong and Zheng, Yalin and Frangi, Alejandro and Liu, Jiang},
booktitle={International Conference on Medical Image Computing and Computer-Assisted Intervention},
pages={721--730},
year={2019},
organization={Springer}
}
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