Web Tracking
Web tracking encompasses the automated monitoring and analysis of objects or entities within a visual field, aiming for accurate localization, identification, and trajectory prediction. Current research emphasizes robust tracking across diverse conditions (e.g., adverse weather, occlusions, cluttered scenes) using various techniques, including deep learning models (e.g., transformers, U-Nets), Kalman filters, and graph-based methods, often integrated with sensor fusion (e.g., LiDAR, cameras, inertial sensors). These advancements have significant implications for numerous applications, including autonomous navigation, medical imaging, space situational awareness, and sports analytics, by improving the reliability and efficiency of object tracking systems.
Papers
Deep-learning recognition and tracking of individual nanotubes in low-contrast microscopy videos
Vladimir Pimonov, Said Tahir, Vincent Jourdain
Temporal-Enhanced Multimodal Transformer for Referring Multi-Object Tracking and Segmentation
Changcheng Xiao, Qiong Cao, Yujie Zhong, Xiang Zhang, Tao Wang, Canqun Yang, Long Lan