UNet Based
UNet-based architectures are a cornerstone of image segmentation, particularly in medical imaging and remote sensing, aiming to accurately delineate objects within images. Current research focuses on enhancing UNet's performance through modifications like incorporating transformer networks for improved long-range dependency modeling, lightweight designs for resource-constrained applications, and the integration of attention mechanisms and multi-scale feature fusion. These advancements significantly improve segmentation accuracy and efficiency across diverse applications, impacting fields ranging from medical diagnosis and treatment planning to automated cell analysis and environmental monitoring.
Papers
A Region of Interest Focused Triple UNet Architecture for Skin Lesion Segmentation
Guoqing Liu, Yu Guo, Caiying Wu, Guoqing Chen, Barintag Saheya, Qiyu Jin
HoVer-UNet: Accelerating HoVerNet with UNet-based multi-class nuclei segmentation via knowledge distillation
Cristian Tommasino, Cristiano Russo, Antonio Maria Rinaldi, Francesco Ciompi