U-Net V2: Rethinking the Skip Connections of U-Net for Medical Image Segmentation
University of Notre Dame · University of Iowa
Abstract
In this paper, we introduce U-Net v2, a new robust and efficient U-Net variant for medical image segmentation. It aims to augment the infusion of semantic information into low-level features while simultaneously refining high-level features with finer details. For an input image, we begin by extracting multilevel features with a deep neural network encoder. Next, we enhance the feature map of each level by infusing semantic information from higher-level features and integrating finer details from lower-level features through Hadamard product. Our novel skip connections empower features of all the levels with enriched semantic characteristics and intricate details. The improved features are subsequently…
Citation impact
- FWCI
- 91.06
- Percentile
- 100%
- References
- 26
Authors
3Topics & keywords
- Image segmentation
- Computer science
- Net (polyhedron)
- Computer vision
- Artificial intelligence
- Segmentation
- Image (mathematics)
- Mathematics