Unsupervised Setting
Unsupervised learning tackles the challenge of extracting meaningful patterns and representations from data without relying on labeled examples, aiming to reduce the need for extensive human annotation. Current research focuses on developing robust algorithms and model architectures, such as generative adversarial networks (GANs), transformers, and optimal transport methods, to address diverse applications including image segmentation, video compression, and anomaly detection across various modalities (e.g., visual, infrared, audio). This field is significant because it enables efficient learning from vast unlabeled datasets, unlocking opportunities in areas with limited labeled data and paving the way for more data-efficient and generalizable AI systems. The resulting advancements have broad implications for various scientific disciplines and practical applications, including medical imaging, robotics, and industrial process monitoring.
Papers
UNO-QA: An Unsupervised Anomaly-Aware Framework with Test-Time Clustering for OCTA Image Quality Assessment
Juntao Chen, Li Lin, Pujin Cheng, Yijin Huang, Xiaoying Tang
Towards Unsupervised Visual Reasoning: Do Off-The-Shelf Features Know How to Reason?
Monika Wysoczańska, Tom Monnier, Tomasz Trzciński, David Picard