Login / Signup

N-Net: an UNet architecture with dual encoder for medical image segmentation.

Bingtao LiangChen TangWei ZhangMin XuTianbo Wu
Published in: Signal, image and video processing (2023)
In order to assist physicians in diagnosis and treatment planning, accurate and automatic methods of organ segmentation are needed in clinical practice. UNet and its improved models, such as UNet +  + and UNt3 + , have been powerful tools for medical image segmentation. In this paper, we focus on helping the encoder extract richer features and propose a N-Net for medical image segmentation. On the basis of UNet, we propose a dual encoder model to deepen the network depth and enhance the ability of feature extraction. In our implementation, the Squeeze-and-Excitation (SE) module is added to the dual encoder model to obtain channel-level global features. In addition, the introduction of full-scale skip connections promotes the integration of low-level details and high-level semantic information. The performance of our model is tested on the lung and liver datasets, and compared with UNet, UNet +  + and UNet3 + in terms of quantitative evaluation with the Dice, Recall, Precision and F1 score and qualitative evaluation. Our experiments demonstrate that N-Net outperforms the work of UNet, UNet +  + and UNet3 + in these three datasets. By visual comparison of the segmentation results, N-Net produces more coherent organ boundaries and finer details.
Keyphrases
  • deep learning
  • convolutional neural network
  • healthcare
  • machine learning
  • clinical practice
  • high resolution
  • systematic review
  • oxidative stress
  • mass spectrometry
  • quantum dots
  • single cell
  • neural network