Target Detection
Target detection research focuses on accurately identifying objects of interest within various data modalities, such as images, radar signals, and hyperspectral data, often in challenging conditions like clutter, occlusion, or low signal-to-noise ratios. Current efforts concentrate on improving detection accuracy and robustness using deep learning architectures (e.g., YOLO, transformers, and convolutional neural networks), often incorporating techniques like attention mechanisms, data augmentation, and active learning to address data limitations and improve efficiency. These advancements have significant implications for diverse fields, including autonomous driving, remote sensing, medical imaging, and security, enabling more reliable and efficient systems for object identification and tracking.
Papers
Multi-Domain Features Guided Supervised Contrastive Learning for Radar Target Detection
Junjie Wang, Yuze Gao, Dongying Li, Wenxian Yu
Tell Me What to Track: Infusing Robust Language Guidance for Enhanced Referring Multi-Object Tracking
Wenjun Huang, Yang Ni, Hanning Chen, Yirui He, Ian Bryant, Yezi Liu, Mohsen Imani
A Contrastive Learning Based Convolutional Neural Network for ERP Brain-Computer Interfaces
Yuntian Cui, Xinke Shen, Dan Zhang, Chen Yang
Adaptive Modality Balanced Online Knowledge Distillation for Brain-Eye-Computer based Dim Object Detection
Zixing Li, Chao Yan, Zhen Lan, Xiaojia Xiang, Han Zhou, Jun Lai, Dengqing Tang