Spatio Temporal
Spatio-temporal analysis focuses on understanding and modeling phenomena that evolve over both space and time. Current research emphasizes developing advanced models, such as graph neural networks, transformers, and recurrent neural networks, to capture complex spatio-temporal relationships in diverse data types, including videos, sensor networks, and climate data. These advancements are improving predictions in areas like weather forecasting, traffic flow estimation, and human activity recognition, leading to more accurate and efficient solutions for various applications. The field's significance lies in its ability to extract meaningful insights from complex, dynamic datasets, enabling better decision-making across numerous scientific and practical domains.
Papers
MegaCRN: Meta-Graph Convolutional Recurrent Network for Spatio-Temporal Modeling
Renhe Jiang, Zhaonan Wang, Jiawei Yong, Puneet Jeph, Quanjun Chen, Yasumasa Kobayashi, Xuan Song, Toyotaro Suzumura, Shintaro Fukushima
GWRBoost:A geographically weighted gradient boosting method for explainable quantification of spatially-varying relationships
Han Wang, Zhou Huang, Ganmin Yin, Yi Bao, Xiao Zhou, Yong Gao
Learnable Spatio-Temporal Map Embeddings for Deep Inertial Localization
Dennis Melamed, Karnik Ram, Vivek Roy, Kris Kitani
Discovering A Variety of Objects in Spatio-Temporal Human-Object Interactions
Yong-Lu Li, Hongwei Fan, Zuoyu Qiu, Yiming Dou, Liang Xu, Hao-Shu Fang, Peiyang Guo, Haisheng Su, Dongliang Wang, Wei Wu, Cewu Lu
LiteVL: Efficient Video-Language Learning with Enhanced Spatial-Temporal Modeling
Dongsheng Chen, Chaofan Tao, Lu Hou, Lifeng Shang, Xin Jiang, Qun Liu
Differentiable Constrained Imitation Learning for Robot Motion Planning and Control
Christopher Diehl, Janis Adamek, Martin Krüger, Frank Hoffmann, Torsten Bertram