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
MNIST-Fraction: Enhancing Math Education with AI-Driven Fraction Detection and Analysis
Pegah Ahadian, Yunhe Feng, Karl Kosko, Richard Ferdig, Qiang Guan
A Preliminary Analysis of Automatic Word and Syllable Prominence Detection in Non-Native Speech With Text-to-Speech Prosody Embeddings
Anindita Mondal, Rangavajjala Sankara Bharadwaj, Jhansi Mallela, Anil Kumar Vuppala, Chiranjeevi Yarra
Breaking the Bias: Recalibrating the Attention of Industrial Anomaly Detection
Xin Chen, Liujuan Cao, Shengchuan Zhang, Xiewu Zheng, Yan Zhang
NLPineers@ NLU of Devanagari Script Languages 2025: Hate Speech Detection using Ensembling of BERT-based models
Anmol Guragain, Nadika Poudel, Rajesh Piryani, Bishesh Khanal
MHSA: A Multi-scale Hypergraph Network for Mild Cognitive Impairment Detection via Synchronous and Attentive Fusion
Manman Yuan, Weiming Jia, Xiong Luo, Jiazhen Ye, Peican Zhu, Junlin Li
Self-Paced Learning Strategy with Easy Sample Prior Based on Confidence for the Flying Bird Object Detection Model Training
Zi-Wei Sun, Ze-Xi hua, Heng-Chao Li, Yan Li
Your Data Is Not Perfect: Towards Cross-Domain Out-of-Distribution Detection in Class-Imbalanced Data
Xiang Fang, Arvind Easwaran, Blaise Genest, Ponnuthurai Nagaratnam Suganthan
Leveraging Prompt Learning and Pause Encoding for Alzheimer's Disease Detection
Yin-Long Liu, Rui Feng, Jia-Hong Yuan, Zhen-Hua Ling
YOLOv5-Based Object Detection for Emergency Response in Aerial Imagery
Sindhu Boddu, Arindam Mukherjee, Arindrajit Seal
Uncertainty Quantification for Transformer Models for Dark-Pattern Detection
Javier Muñoz, Álvaro Huertas-García, Carlos Martí-González, Enrique De Miguel Ambite
ColonNet: A Hybrid Of DenseNet121 And U-NET Model For Detection And Segmentation Of GI Bleeding
Ayushman Singh, Sharad Prakash, Aniket Das, Nidhi Kushwaha
Navigating Shortcuts, Spurious Correlations, and Confounders: From Origins via Detection to Mitigation
David Steinmann, Felix Divo, Maurice Kraus, Antonia Wüst, Lukas Struppek, Felix Friedrich, Kristian Kersting
A Practical Examination of AI-Generated Text Detectors for Large Language Models
Brian Tufts, Xuandong Zhao, Lei Li
DEYOLO: Dual-Feature-Enhancement YOLO for Cross-Modality Object Detection
Yishuo Chen, Boran Wang, Xinyu Guo, Wenbin Zhu, Jiasheng He, Xiaobin Liu, Jing Yuan
MVUDA: Unsupervised Domain Adaptation for Multi-view Pedestrian Detection
Erik Brorsson, Lennart Svensson, Kristofer Bengtsson, Knut Åkesson
Thermal and RGB Images Work Better Together in Wind Turbine Damage Detection
Serhii Svystun, Oleksandr Melnychenko, Pavlo Radiuk, Oleg Savenko, Anatoliy Sachenko, Andrii Lysyi
Deep Learning and Hybrid Approaches for Dynamic Scene Analysis, Object Detection and Motion Tracking
Shahran Rahman Alve