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
Hi-SAM: Marrying Segment Anything Model for Hierarchical Text Segmentation
Maoyuan Ye, Jing Zhang, Juhua Liu, Chenyu Liu, Baocai Yin, Cong Liu, Bo Du, Dacheng Tao
Convolution Meets LoRA: Parameter Efficient Finetuning for Segment Anything Model
Zihan Zhong, Zhiqiang Tang, Tong He, Haoyang Fang, Chun Yuan
SimAda: A Simple Unified Framework for Adapting Segment Anything Model in Underperformed Scenes
Yiran Song, Qianyu Zhou, Xuequan Lu, Zhiwen Shao, Lizhuang Ma
On generalisability of segment anything model for nuclear instance segmentation in histology images
Kesi Xu, Lea Goetz, Nasir Rajpoot
Grounded SAM: Assembling Open-World Models for Diverse Visual Tasks
Tianhe Ren, Shilong Liu, Ailing Zeng, Jing Lin, Kunchang Li, He Cao, Jiayu Chen, Xinyu Huang, Yukang Chen, Feng Yan, Zhaoyang Zeng, Hao Zhang, Feng Li, Jie Yang, Hongyang Li, Qing Jiang, Lei Zhang
RAP-SAM: Towards Real-Time All-Purpose Segment Anything
Shilin Xu, Haobo Yuan, Qingyu Shi, Lu Qi, Jingbo Wang, Yibo Yang, Yining Li, Kai Chen, Yunhai Tong, Bernard Ghanem, Xiangtai Li, Ming-Hsuan Yang
Boosting Few-Shot Semantic Segmentation Via Segment Anything Model
Chen-Bin Feng, Qi Lai, Kangdao Liu, Houcheng Su, Chi-Man Vong