Temporal Feature
Temporal features, encompassing the sequential and dynamic aspects of data across time, are crucial for understanding various phenomena in diverse fields. Current research focuses on effectively integrating temporal information into models, employing architectures like transformers, recurrent neural networks (RNNs), and convolutional neural networks (CNNs), often combined with attention mechanisms to capture long-range dependencies and improve efficiency. This work is significant because accurate modeling of temporal dynamics is essential for advancements in areas such as video generation, autonomous driving, and anomaly detection, leading to improved performance and interpretability in these applications.
Papers
Skeleton-Guided Spatial-Temporal Feature Learning for Video-Based Visible-Infrared Person Re-Identification
Wenjia Jiang, Xiaoke Zhu, Jiakang Gao, Di Liao
TeG: Temporal-Granularity Method for Anomaly Detection with Attention in Smart City Surveillance
Erkut Akdag, Egor Bondarev, Peter H. N. De With
Map-Free Trajectory Prediction with Map Distillation and Hierarchical Encoding
Xiaodong Liu, Yucheng Xing, Xin Wang
4-LEGS: 4D Language Embedded Gaussian Splatting
Gal Fiebelman, Tamir Cohen, Ayellet Morgenstern, Peter Hedman, Hadar Averbuch-Elor
MoTE: Reconciling Generalization with Specialization for Visual-Language to Video Knowledge Transfer
Minghao Zhu, Zhengpu Wang, Mengxian Hu, Ronghao Dang, Xiao Lin, Xun Zhou, Chengju Liu, Qijun Chen