Image Segmentation
Image segmentation, the process of partitioning an image into meaningful regions, aims to accurately delineate objects or areas of interest within a visual scene. Current research heavily emphasizes leveraging foundation models like Segment Anything Model (SAM) and its variants, often incorporating adaptations such as dual-branch architectures or efficient adapters to improve performance on specific domains (e.g., medical imaging, remote sensing) and address limitations like memory consumption. These advancements are significantly impacting diverse fields, from medical diagnosis and industrial inspection to autonomous driving and cultural heritage preservation, by enabling more accurate, efficient, and automated image analysis.
Papers
Static Segmentation by Tracking: A Frustratingly Label-Efficient Approach to Fine-Grained Segmentation
Zhenyang Feng, Zihe Wang, Saul Ibaven Bueno, Tomasz Frelek, Advikaa Ramesh, Jingyan Bai, Lemeng Wang, Zanming Huang, Jianyang Gu, Jinsu Yoo, Tai-Yu Pan, Arpita Chowdhury, Michelle Ramirez, Elizabeth G. Campolongo, Matthew J. Thompson, Christopher G. Lawrence, Sydne Record, Neil Rosser, Anuj Karpatne, Daniel Rubenstein, Hilmar Lapp, Charles V. Stewart, Tanya Berger-Wolf, Yu Su, Wei-Lun Chao
PGP-SAM: Prototype-Guided Prompt Learning for Efficient Few-Shot Medical Image Segmentation
Zhonghao Yan, Zijin Yin, Tianyu Lin, Xiangzhu Zeng, Kongming Liang, Zhanyu Ma
SELMA3D challenge: Self-supervised learning for 3D light-sheet microscopy image segmentation
Ying Chen, Rami Al-Maskari, Izabela Horvath, Mayar Ali, Luciano Höher, Kaiyuan Yang, Zengming Lin, Zhiwei Zhai, Mengzhe Shen, Dejin Xun, Yi Wang, Tony Xu, Maged Goubran, Yunheng Wu, Ali Erturk, Johannes C. Paetzold
Image Segmentation: Inducing graph-based learning
Aryan Singh, Pepijn Van de Ven, Ciarán Eising, Patrick Denny
EAUWSeg: Eliminating annotation uncertainty in weakly-supervised medical image segmentation
Wang Lituan, Zhang Lei, Wang Yan, Wang Zhenbin, Zhang Zhenwei, Zhang Yi
Merging Context Clustering with Visual State Space Models for Medical Image Segmentation
Yun Zhu, Dong Zhang, Yi Lin, Yifei Feng, Jinhui Tang