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
Unsupervised Machine Learning for Detecting and Locating Human-Made Objects in 3D Point Cloud
Hong Zhao, Huyunting Huang, Tonglin Zhang, Baijian Yang, Jin Wei-Kocsis, Songlin Fei
Detection of Emerging Infectious Diseases in Lung CT based on Spatial Anomaly Patterns
Branko Mitic, Philipp Seeböck, Jennifer Straub, Helmut Prosch, Georg Langs
Detection of Human and Machine-Authored Fake News in Urdu
Muhammad Zain Ali, Yuxia Wang, Bernhard Pfahringer, Tony Smith
Coordinated Reply Attacks in Influence Operations: Characterization and Detection
Manita Pote, Tuğrulcan Elmas, Alessandro Flammini, Filippo Menczer
Enriching GNNs with Text Contextual Representations for Detecting Disinformation Campaigns on Social Media
Bruno Croso Cunha da Silva, Thomas Palmeira Ferraz, Roseli De Deus Lopes
ODDN: Addressing Unpaired Data Challenges in Open-World Deepfake Detection on Online Social Networks
Renshuai Tao, Manyi Le, Chuangchuang Tan, Huan Liu, Haotong Qin, Yao Zhao
Moving Object Segmentation in Point Cloud Data using Hidden Markov Models
Vedant Bhandari, Jasmin James, Tyson Phillips, P. Ross McAree
Spatio-temporal Multivariate Cluster Evolution Analysis for Detecting and Tracking Climate Impacts
Warren L. Davis IV, Max Carlson, Irina Tezaur, Diana Bull, Kara Peterson, Laura Swiler
MultiRC: Joint Learning for Time Series Anomaly Prediction and Detection with Multi-scale Reconstructive Contrast
Shiyan Hu, Kai Zhao, Xiangfei Qiu, Yang Shu, Jilin Hu, Bin Yang, Chenjuan Guo
How Important are Data Augmentations to Close the Domain Gap for Object Detection in Orbit?
Maximilian Ulmer, Leonard Klüpfel, Maximilian Durner, Rudolph Triebel
AMPLE: Emotion-Aware Multimodal Fusion Prompt Learning for Fake News Detection
Xiaoman Xu, Xiangrun Li, Taihang Wang, Ye Jiang