U Net
U-Net is a convolutional neural network architecture primarily used for image segmentation, aiming to accurately delineate objects or regions of interest within an image. Current research focuses on enhancing U-Net's performance through modifications like incorporating attention mechanisms, transformer blocks, and novel convolutional operations, as well as exploring its application in diverse fields beyond traditional image analysis, such as medical imaging, remote sensing, and audio processing. These advancements improve segmentation accuracy, efficiency, and robustness across various data types and challenging conditions, impacting fields ranging from medical diagnosis to autonomous systems.
Papers
LHU-Net: A Light Hybrid U-Net for Cost-Efficient, High-Performance Volumetric Medical Image Segmentation
Yousef Sadegheih, Afshin Bozorgpour, Pratibha Kumari, Reza Azad, Dorit Merhof
PlateSegFL: A Privacy-Preserving License Plate Detection Using Federated Segmentation Learning
Md. Shahriar Rahman Anuvab, Mishkat Sultana, Md. Atif Hossain, Shashwata Das, Suvarthi Chowdhury, Rafeed Rahman, Dibyo Fabian Dofadar, Shahriar Rahman Rana
CRM: Single Image to 3D Textured Mesh with Convolutional Reconstruction Model
Zhengyi Wang, Yikai Wang, Yifei Chen, Chendong Xiang, Shuo Chen, Dajiang Yu, Chongxuan Li, Hang Su, Jun Zhu
A Probabilistic Hadamard U-Net for MRI Bias Field Correction
Xin Zhu, Hongyi Pan, Yury Velichko, Adam B. Murphy, Ashley Ross, Baris Turkbey, Ahmet Enis Cetin, Ulas Bagci