Detection Method
Detection methods encompass a broad range of techniques aiming to identify specific objects, events, or anomalies within various data types, from images and sensor readings to text and quantum states. Current research emphasizes the use of deep learning models, including transformers, object detection architectures (like YOLO), and ensemble methods, often coupled with advanced feature extraction and fusion techniques to improve accuracy and robustness. These advancements have significant implications across diverse fields, including medical imaging, autonomous driving, cybersecurity (e.g., deepfake and malware detection), and quantum computing, enabling more efficient and reliable analysis of complex data. The development of robust and generalizable detection methods remains a key focus, particularly in addressing challenges posed by adversarial attacks and limited training data.
Papers
Reliably Bounding False Positives: A Zero-Shot Machine-Generated Text Detection Framework via Multiscaled Conformal Prediction
Xiaowei Zhu, Yubing Ren, Yanan Cao, Xixun Lin, Fang Fang, Yangxi LiChinese Academy of Sciences●University of Chinese Academy of Sciences●Coordination Center of ChinaAdaptive Contextual Embedding for Robust Far-View Borehole Detection
Xuesong Liu, Tianyu Hao, Emmett J. IentilucciRochester Institute of Technology●Guangzhou University