Segmentation Task
Image segmentation, the task of partitioning an image into meaningful regions, is a core problem in computer vision with applications spanning medical imaging, remote sensing, and augmented reality. Current research focuses on improving the efficiency and generalization of segmentation models, particularly through the development of novel architectures like Transformers and CNN hybrids, and the exploration of techniques such as in-context learning and test-time prompting to adapt models to diverse datasets and unseen domains. These advancements are crucial for enabling robust and accurate segmentation in resource-constrained environments and for improving the reliability and interpretability of segmentation results across various applications.
Papers
Tyche: Stochastic In-Context Learning for Medical Image Segmentation
Marianne Rakic, Hallee E. Wong, Jose Javier Gonzalez Ortiz, Beth Cimini, John Guttag, Adrian V. Dalca
Segment Any Cell: A SAM-based Auto-prompting Fine-tuning Framework for Nuclei Segmentation
Saiyang Na, Yuzhi Guo, Feng Jiang, Hehuan Ma, Junzhou Huang
Adaptive FSS: A Novel Few-Shot Segmentation Framework via Prototype Enhancement
Jing Wang, Jinagyun Li, Chen Chen, Yisi Zhang, Haoran Shen, Tianxiang Zhang
PULASki: Learning inter-rater variability using statistical distances to improve probabilistic segmentation
Soumick Chatterjee, Franziska Gaidzik, Alessandro Sciarra, Hendrik Mattern, Gábor Janiga, Oliver Speck, Andreas Nürnberger, Sahani Pathiraja
ResEnsemble-DDPM: Residual Denoising Diffusion Probabilistic Models for Ensemble Learning
Shi Zhenning, Dong Changsheng, Xie Xueshuo, Pan Bin, He Along, Li Tao
Universal Segmentation at Arbitrary Granularity with Language Instruction
Yong Liu, Cairong Zhang, Yitong Wang, Jiahao Wang, Yujiu Yang, Yansong Tang