Segment Anything
Segment Anything (SAM) is a foundational model for image segmentation that aims to segment any object in an image given a simple prompt, such as a point or bounding box. Current research focuses on improving SAM's efficiency, accuracy, and adaptability to various domains and modalities (e.g., medical images, lidar data, video) through techniques like lightweight adapters, prompt refinement strategies, and multi-modal fusion. This versatile model has significant implications for numerous applications, including medical image analysis, autonomous driving, and remote sensing, by enabling efficient and accurate segmentation across diverse data types.
Papers
Segment Anything in 3D with Radiance Fields
Jiazhong Cen, Jiemin Fang, Zanwei Zhou, Chen Yang, Lingxi Xie, Xiaopeng Zhang, Wei Shen, Qi Tian
Segment Anything in Medical Images
Jun Ma, Yuting He, Feifei Li, Lin Han, Chenyu You, Bo Wang
Track Anything: Segment Anything Meets Videos
Jinyu Yang, Mingqi Gao, Zhe Li, Shang Gao, Fangjing Wang, Feng Zheng
SAM Struggles in Concealed Scenes -- Empirical Study on "Segment Anything"
Ge-Peng Ji, Deng-Ping Fan, Peng Xu, Ming-Ming Cheng, Bowen Zhou, Luc Van Gool
Segment Anything Is Not Always Perfect: An Investigation of SAM on Different Real-world Applications
Wei Ji, Jingjing Li, Qi Bi, Tingwei Liu, Wenbo Li, Li Cheng