Data Detection
Data detection research focuses on reliably identifying patterns and anomalies within diverse data types, aiming to improve accuracy and efficiency across various applications. Current efforts concentrate on enhancing existing models like YOLO and convolutional neural networks, incorporating techniques such as few-shot learning, ensemble methods, and vision-language models to address challenges like imbalanced datasets, adversarial attacks, and low-light conditions. These advancements have significant implications for fields ranging from autonomous driving and healthcare diagnostics to combating misinformation and securing AI models.
Papers
Event-based dataset for the detection and classification of manufacturing assembly tasks
Laura Duarte, Pedro Neto
Large Language Models' Detection of Political Orientation in Newspapers
Alessio Buscemi, Daniele Proverbio
Fairness Hub Technical Briefs: Definition and Detection of Distribution Shift
Nicolas Acevedo, Carmen Cortez, Chris Brooks, Rene Kizilcec, Renzhe Yu