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
Explaining Deep Models through Forgettable Learning Dynamics
Ryan Benkert, Oluwaseun Joseph Aribido, Ghassan AlRegib
Learning with minimal effort: leveraging in silico labeling for cell and nucleus segmentation
Thomas Bonte, Maxence Philbert, Emeline Coleno, Edouard Bertrand, Arthur Imbert, Thomas Walter
Analysing the effectiveness of a generative model for semi-supervised medical image segmentation
Margherita Rosnati, Fabio De Sousa Ribeiro, Miguel Monteiro, Daniel Coelho de Castro, Ben Glocker
MALUNet: A Multi-Attention and Light-weight UNet for Skin Lesion Segmentation
Jiacheng Ruan, Suncheng Xiang, Mingye Xie, Ting Liu, Yuzhuo Fu