Abstract
Medical image segmentation based on deep learning is a central research issue in the field of computer vision. Many existing segmentation networks can achieve accurate segmentation using fewer data sets. However, they have disadvantages such as poor network flexibility and do not adequately consider the interdependence between feature channels. In response to these problems, this paper proposes a new de-normalized channel attention network, which uses an improved de-normalized residual block structure and a new channel attention module in the network for the segmentation of sophisticated vessels. The de-normalized network sends the extracted rough features to the channel attention network. The channel attention module can explicitly model the interdependence between channels and pay attention to the correlation with crucial information in multiple feature channels. It can focus on the channels with the most association with vital information among multiple feature channels, and get more detailed feature results. Experimental results show that the network proposed in this paper is feasible, is robust, can accurately segment blood vessels, and is particularly suitable for complex blood vessel structures. Finally, we compared and verified the network proposed in this paper with the state-of-the-art network and obtained better experimental results.
Highlights
Medical images have multiple modalities, such as Magnetic Resonance Angiography (MRA), Computed Tomography Angiography (CTA), Positron Emission Tomography (PET), ultrasound imaging, and more
The contributions of our work can be summarized as below: (1) We propose a de-normalized channel attention network, which consists of a new channel attention module SCA and an improved de-normalized block
We first input the patches of the original picture and the mask picture into the de-normalized network, which can quickly extract rough features of the blood vessel and send the feature values to the second channel attention network (Hereafter called CAU-Net)
Summary
Medical images have multiple modalities, such as Magnetic Resonance Angiography (MRA), Computed Tomography Angiography (CTA), Positron Emission Tomography (PET), ultrasound imaging, and more. In clinical diagnosis and treatment, the segmentation technology of medical images affects the reliability of diagnosis results to a great extent. Medical image segmentation technology is the first step of many medical image processing technologies, such as visualization, 3d reconstruction. Its development will affect the evolution of other related technologies in medical image processing. With the rapid development of deep learning, a large number of intelligent methods based on neural networks for medical images segmentation have emerged in recent years. Medical image segmentation has some limitations, including data scarcity and class imbalance [1]
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