TY - GEN
T1 - A Novel Attention Method to Process Long Trajectories’ Sequences Efficiently
AU - Abdalla, Mohammed
AU - Mokhtar, Hoda M.O.
AU - Hendawi, Abdeltawab
AU - Yang, Tiansheng
AU - Rathore, Rajkumar Singh
N1 - Publisher Copyright:
© The Author(s), under exclusive license to Springer Nature Singapore Pte Ltd. 2025.
PY - 2025/7/3
Y1 - 2025/7/3
N2 - Processing users’ trajectories has become a crucial task in various aspects of location-based services, such as traffic prediction, trajectory recommendations, tourism recommendations, and travel planning. However, predominately most of the models that currently exist fail when they are trained with long trajectory sequences. This paper proposes a deep learning attention-based model, named (SAMO) to efficiently process the long trajectory sequences of moving objects efficiently on road networks. Indeed, (SAMO) stands for Spatial Attention Model for Objects’ Movements. The proposed model promises to process the very long trajectory sequences that will most likely be visited by the moving object whether the object’s self-history is available. In the case of no self-history, the model starts by catching the k nearest moving objects in the vicinity. In the case of self-history, the model selects trajectories like its current trip from stored history. After that, the model is trained by these objects’ trajectories either k nearest objects or similar objects and then focuses on the significant parts of these trajectories to generate results of processing and analysis of the trajectory. Overall, the proposed model outperforms competitive models by achieving up to 98% accuracy for the next multi-step prediction.
AB - Processing users’ trajectories has become a crucial task in various aspects of location-based services, such as traffic prediction, trajectory recommendations, tourism recommendations, and travel planning. However, predominately most of the models that currently exist fail when they are trained with long trajectory sequences. This paper proposes a deep learning attention-based model, named (SAMO) to efficiently process the long trajectory sequences of moving objects efficiently on road networks. Indeed, (SAMO) stands for Spatial Attention Model for Objects’ Movements. The proposed model promises to process the very long trajectory sequences that will most likely be visited by the moving object whether the object’s self-history is available. In the case of no self-history, the model starts by catching the k nearest moving objects in the vicinity. In the case of self-history, the model selects trajectories like its current trip from stored history. After that, the model is trained by these objects’ trajectories either k nearest objects or similar objects and then focuses on the significant parts of these trajectories to generate results of processing and analysis of the trajectory. Overall, the proposed model outperforms competitive models by achieving up to 98% accuracy for the next multi-step prediction.
KW - Attention model
KW - Deep learning
KW - Moving objects
KW - Neural network
KW - Trajectory analysis
KW - Transportation sustainability
UR - https://www.scopus.com/pages/publications/105010599621
U2 - 10.1007/978-981-96-3250-3_31
DO - 10.1007/978-981-96-3250-3_31
M3 - Conference contribution
AN - SCOPUS:105010599621
SN - 9789819632497
T3 - Lecture Notes in Networks and Systems
SP - 395
EP - 413
BT - Proceedings of 4th International Conference on Computing and Communication Networks, ICCCN 2024
A2 - Kumar, Akshi
A2 - Swaroop, Abhishek
A2 - Shukla, Pancham
PB - Springer Science and Business Media Deutschland GmbH
T2 - 4th International Conference on Computing and Communication Networks, ICCCN 2024
Y2 - 17 October 2024 through 18 October 2024
ER -