Segmentation Performance
Segmentation performance, the accuracy of delineating objects or regions within images, is a critical area of research across diverse fields, aiming to improve the precision and efficiency of automated image analysis. Current research focuses on enhancing existing architectures like U-Net and incorporating transformers, large language models, and foundation models like SAM to improve segmentation accuracy, particularly in challenging domains such as medical imaging and microscopy. These advancements are crucial for improving diagnostic accuracy in healthcare, accelerating scientific discovery in various biological fields, and enabling more robust automation in numerous applications. Significant effort is also being devoted to addressing challenges like noisy labels, domain adaptation, and computational efficiency.
Papers
Multimodal Industrial Anomaly Detection by Crossmodal Feature Mapping
Alex Costanzino, Pierluigi Zama Ramirez, Giuseppe Lisanti, Luigi Di Stefano
Semi-Supervised Active Learning for Semantic Segmentation in Unknown Environments Using Informative Path Planning
Julius Rückin, Federico Magistri, Cyrill Stachniss, Marija Popović
Automatic segmentation of lung findings in CT and application to Long COVID
Diedre S. Carmo, Rosarie A. Tudas, Alejandro P. Comellas, Leticia Rittner, Roberto A. Lotufo, Joseph M. Reinhardt, Sarah E. Gerard
Vision Transformers increase efficiency of 3D cardiac CT multi-label segmentation
Lee Jollans, Mariana Bustamante, Lilian Henriksson, Anders Persson, Tino Ebbers
A Foundation Model for General Moving Object Segmentation in Medical Images
Zhongnuo Yan, Tong Han, Yuhao Huang, Lian Liu, Han Zhou, Jiongquan Chen, Wenlong Shi, Yan Cao, Xin Yang, Dong Ni
nnSAM: Plug-and-play Segment Anything Model Improves nnUNet Performance
Yunxiang Li, Bowen Jing, Zihan Li, Jing Wang, You Zhang
Investigating Shift Equivalence of Convolutional Neural Networks in Industrial Defect Segmentation
Zhen Qu, Xian Tao, Fei Shen, Zhengtao Zhang, Tao Li