Foundation Model
Foundation models are large, pre-trained AI models designed to generalize across diverse tasks and datasets, offering a powerful alternative to task-specific models. Current research emphasizes adapting these models to various domains, including healthcare (e.g., medical image analysis, EEG interpretation), scientific applications (e.g., genomics, weather forecasting), and robotics, often employing architectures like transformers and mixtures of experts with innovative gating functions. This approach promises to improve efficiency and accuracy in numerous fields by leveraging the knowledge embedded within these powerful models, streamlining data analysis and enabling new applications previously hindered by data scarcity or computational limitations.
Papers
Symbiotic Game and Foundation Models for Cyber Deception Operations in Strategic Cyber Warfare
Tao Li, Quanyan Zhu
OneTracker: Unifying Visual Object Tracking with Foundation Models and Efficient Tuning
Lingyi Hong, Shilin Yan, Renrui Zhang, Wanyun Li, Xinyu Zhou, Pinxue Guo, Kaixun Jiang, Yiting Chen, Jinglun Li, Zhaoyu Chen, Wenqiang Zhang
Foundation Models and Information Retrieval in Digital Pathology
H. R. Tizhoosh
Self-Supervised Learning for Covariance Estimation
Tzvi Diskin, Ami Wiesel
Low-Cost and Real-Time Industrial Human Action Recognitions Based on Large-Scale Foundation Models
Wensheng Liang, Ruiyan Zhuang, Xianwei Shi, Shuai Li, Zhicheng Wang, Xiaoguang Ma
CoPa: General Robotic Manipulation through Spatial Constraints of Parts with Foundation Models
Haoxu Huang, Fanqi Lin, Yingdong Hu, Shengjie Wang, Yang Gao
Multiscale Low-Frequency Memory Network for Improved Feature Extraction in Convolutional Neural Networks
Fuzhi Wu, Jiasong Wu, Youyong Kong, Chunfeng Yang, Guanyu Yang, Huazhong Shu, Guy Carrault, Lotfi Senhadji
UPS: Efficiently Building Foundation Models for PDE Solving via Cross-Modal Adaptation
Junhong Shen, Tanya Marwah, Ameet Talwalkar
Learning with Noisy Foundation Models
Hao Chen, Jindong Wang, Zihan Wang, Ran Tao, Hongxin Wei, Xing Xie, Masashi Sugiyama, Bhiksha Raj
Leveraging Foundation Models for Content-Based Medical Image Retrieval in Radiology
Stefan Denner, David Zimmerer, Dimitrios Bounias, Markus Bujotzek, Shuhan Xiao, Lisa Kausch, Philipp Schader, Tobias Penzkofer, Paul F. Jäger, Klaus Maier-Hein
PointSeg: A Training-Free Paradigm for 3D Scene Segmentation via Foundation Models
Qingdong He, Jinlong Peng, Zhengkai Jiang, Xiaobin Hu, Jiangning Zhang, Qiang Nie, Yabiao Wang, Chengjie Wang
General surgery vision transformer: A video pre-trained foundation model for general surgery
Samuel Schmidgall, Ji Woong Kim, Jeffrey Jopling, Axel Krieger
uniGradICON: A Foundation Model for Medical Image Registration
Lin Tian, Hastings Greer, Roland Kwitt, Francois-Xavier Vialard, Raul San Jose Estepar, Sylvain Bouix, Richard Rushmore, Marc Niethammer
Yi: Open Foundation Models by 01.AI
01. AI, :, Alex Young, Bei Chen, Chao Li, Chengen Huang, Ge Zhang, Guanwei Zhang, Heng Li, Jiangcheng Zhu, Jianqun Chen, Jing Chang, Kaidong Yu, Peng Liu, Qiang Liu, Shawn Yue, Senbin Yang, Shiming Yang, Tao Yu, Wen Xie, Wenhao Huang, Xiaohui Hu, Xiaoyi Ren, Xinyao Niu, Pengcheng Nie, Yuchi Xu, Yudong Liu, Yue Wang, Yuxuan Cai, Zhenyu Gu, Zhiyuan Liu, Zonghong Dai
Enhancing Data Quality in Federated Fine-Tuning of Foundation Models
Wanru Zhao, Yaxin Du, Nicholas Donald Lane, Siheng Chen, Yanfeng Wang
ComFe: Interpretable Image Classifiers With Foundation Models, Transformers and Component Features
Evelyn Mannix, Howard Bondell