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
Multi-Modality Conditioned Variational U-Net for Field-of-View Extension in Brain Diffusion MRI
Zhiyuan Li, Tianyuan Yao, Praitayini Kanakaraj, Chenyu Gao, Shunxing Bao, Lianrui Zuo, Michael E. Kim, Nancy R. Newlin, Gaurav Rudravaram, Nazirah M. Khairi, Yuankai Huo, Kurt G. Schilling, Walter A. Kukull, Arthur W. Toga, Derek B. Archer, Timothy J. Hohman, Bennett A. Landman
Improved Unet brain tumor image segmentation based on GSConv module and ECA attention mechanism
Qiyuan Tian, Zhuoyue Wang, Xiaoling Cui
UniTabNet: Bridging Vision and Language Models for Enhanced Table Structure Recognition
Zhenrong Zhang, Shuhang Liu, Pengfei Hu, Jiefeng Ma, Jun Du, Jianshu Zhang, Yu Hu