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
EdgeSAM: Prompt-In-the-Loop Distillation for On-Device Deployment of SAM
Chong Zhou, Xiangtai Li, Chen Change Loy, Bo Dai
SqueezeSAM: User friendly mobile interactive segmentation
Balakrishnan Varadarajan, Bilge Soran, Forrest Iandola, Xiaoyu Xiang, Yunyang Xiong, Lemeng Wu, Chenchen Zhu, Raghuraman Krishnamoorthi, Vikas Chandra
SemiSAM: Enhancing Semi-Supervised Medical Image Segmentation via SAM-Assisted Consistency Regularization
Yichi Zhang, Jin Yang, Yuchen Liu, Yuan Cheng, Yuan Qi
Segment and Caption Anything
Xiaoke Huang, Jianfeng Wang, Yansong Tang, Zheng Zhang, Han Hu, Jiwen Lu, Lijuan Wang, Zicheng Liu
EfficientSAM: Leveraged Masked Image Pretraining for Efficient Segment Anything
Yunyang Xiong, Bala Varadarajan, Lemeng Wu, Xiaoyu Xiang, Fanyi Xiao, Chenchen Zhu, Xiaoliang Dai, Dilin Wang, Fei Sun, Forrest Iandola, Raghuraman Krishnamoorthi, Vikas Chandra