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.
815papers
Papers - Page 3
March 27, 2025
A Data Balancing and Ensemble Learning Approach for Credit Card Fraud Detection
Yuhan WangLearning Class Prototypes for Unified Sparse Supervised 3D Object Detection
Yun Zhu, Le Hui, Hang Yang, Jianjun Qian, Jin Xie, Jian YangNanjing University of Science and Technology●Northwestern Polytechnical University●Nanjing University●Nanjing University
March 26, 2025
Semi-supervised learning for marine anomaly detection on board satellites
Luca MariniSmall Object Detection: A Comprehensive Survey on Challenges, Techniques and Real-World Applications
Mahya Nikouei, Bita Baroutian, Shahabedin Nabavi, Fateme Taraghi, Atefe Aghaei, Ayoob Sajedi, Mohsen Ebrahimi MoghaddamShahid Beheshti UniversityTowards Efficient and General-Purpose Few-Shot Misclassification Detection for Vision-Language Models
Fanhu Zeng, Zhen Cheng, Fei Zhu, Xu-Yao ZhangCAS●UCAS●HKISI-CASTempTest: Local Normalization Distortion and the Detection of Machine-generated Text
Tom Kempton, Stuart Burrell, Connor CheverallUniversity of Manchester●Featurespace●University of Cambridge
March 25, 2025
Bigger But Not Better: Small Neural Language Models Outperform Large Language Models in Detection of Thought Disorder
Changye Li, Weizhe Xu, Serguei Pakhomov, Ellen Bradley, Dror Ben-Zeev, Trevor CohenUniversity of Washington●University of Minnesota●San FranciscoUnlocking the Hidden Potential of CLIP in Generalizable Deepfake Detection
Andrii Yermakov, Jan Cech, Jiri MatasCzech Technical University in PragueKSHSeek: Data-Driven Approaches to Mitigating and Detecting Knowledge-Shortcut Hallucinations in Generative Models
Zhiwei Wang, Zhongxin Liu, Ying Li, Hongyu Sun, Meng Xu, Yuqing ZhangUniversity of Chinese Academy of Sciences●Xidian University●Hainan University●University of WaterlooMATT-GS: Masked Attention-based 3DGS for Robot Perception and Object Detection
Jee Won Lee, Hansol Lim, SooYeun Yang, Jongseong Brad ChoiState University of New York●Stony BrookFace Spoofing Detection using Deep Learning
Najeebullah, Maaz Salman, Zar Nawab Khan SwatiKIU●Pukyong National University
March 24, 2025
Compositional Caching for Training-free Open-vocabulary Attribute Detection
Marco Garosi, Alessandro Conti, Gaowen Liu, Elisa Ricci, Massimiliano ManciniUniversity of Trento●Cisco Research●Fondazione Bruno KesslerLeveraging Perturbation Robustness to Enhance Out-of-Distribution Detection
Wenxi Chen, Raymond A. Yeh, Shaoshuai Mou, Yan GuPurdue University
March 21, 2025
Communities in the Kuramoto Model: Dynamics and Detection via Path Signatures
Tâm Johan Nguyên, Darrick Lee, Bernadette Jana StolzD2Fusion: Dual-domain Fusion with Feature Superposition for Deepfake Detection
Xueqi Qiu, Xingyu Miao, Fan Wan, Haoran Duan, Tejal Shah, Varun Ojhab, Yang Longa, Rajiv RanjanDurham University●Newcastle University
March 20, 2025
ATOM: A Framework of Detecting Query-Based Model Extraction Attacks for Graph Neural Networks
Zhan Cheng, Bolin Shen, Tianming Sha, Yuan Gao, Shibo Li, Yushun DongUniversity of Wisconsin●Florida State University●Arizona State UniversityClassification of User Reports for Detection of Faulty Computer Components using NLP Models: A Case Study
Maria de Lourdes M. Silva, André L. C. Mendonça, Eduardo R. D. Neto, Iago C. Chaves, Felipe T. Brito, Victor A. E. Farias, Javam C. MachadoUniversidade Federal do CearáTransformer-based Wireless Symbol Detection Over Fading Channels
Li Fan, Jing Yang, Cong ShenUniversity of Virginia