Segment Anything Model
The Segment Anything Model (SAM) is a foundational model for image segmentation, aiming to provide a universal solution capable of segmenting any object in any image with minimal user input. Current research focuses on improving SAM's efficiency for resource-constrained environments, adapting it to specific domains like medical imaging and video, and exploring its use in conjunction with other models, such as large language models, for more complex tasks. SAM's strong zero-shot generalization capabilities and flexibility in prompt types are revolutionizing image segmentation, impacting fields ranging from medical diagnosis to autonomous driving through improved annotation efficiency and task performance.
Papers
Mamba or RWKV: Exploring High-Quality and High-Efficiency Segment Anything Model
Haobo Yuan, Xiangtai Li, Lu Qi, Tao Zhang, Ming-Hsuan Yang, Shuicheng Yan, Chen Change Loy
Segment Anything Model for automated image data annotation: empirical studies using text prompts from Grounding DINO
Fuseini Mumuni, Alhassan Mumuni
Boosting Medical Image Classification with Segmentation Foundation Model
Pengfei Gu, Zihan Zhao, Hongxiao Wang, Yaopeng Peng, Yizhe Zhang, Nishchal Sapkota, Chaoli Wang, Danny Z. Chen
ALPS: An Auto-Labeling and Pre-training Scheme for Remote Sensing Segmentation With Segment Anything Model
Song Zhang, Qingzhong Wang, Junyi Liu, Haoyi Xiong
RobustSAM: Segment Anything Robustly on Degraded Images
Wei-Ting Chen, Yu-Jiet Vong, Sy-Yen Kuo, Sizhuo Ma, Jian Wang
4M-21: An Any-to-Any Vision Model for Tens of Tasks and Modalities
Roman Bachmann, Oğuzhan Fatih Kar, David Mizrahi, Ali Garjani, Mingfei Gao, David Griffiths, Jiaming Hu, Afshin Dehghan, Amir Zamir
SAM as the Guide: Mastering Pseudo-Label Refinement in Semi-Supervised Referring Expression Segmentation
Danni Yang, Jiayi Ji, Yiwei Ma, Tianyu Guo, Haowei Wang, Xiaoshuai Sun, Rongrong Ji
Improving Segment Anything on the Fly: Auxiliary Online Learning and Adaptive Fusion for Medical Image Segmentation
Tianyu Huang, Tao Zhou, Weidi Xie, Shuo Wang, Qi Dou, Yizhe Zhang