Attention-based Neural Networks for Multi-modal Trajectory Prediction

Emami, Negar; Braun, Torsten (6 May 2022). Attention-based Neural Networks for Multi-modal Trajectory Prediction. In: Bern Data Science Day. University of Bern: Data Science Lab

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Trajectory prediction is of great importance in wireless and intelligent networks. Accurate forecast of users’ trajectories can provide efficient handover management, continuous network connection, and generally better network quality of service. A trajectory is defined as the sequence of location logs, e.g., GPS coordinates or cellular antenna IDs, over time. We present a trajectory predictor based on Transformers Neural Networks acquiring the self-attention mechanism [1]. Mobile objects’ mobility patterns are influenced by their nearby neighbors. Thus, learning spatio-temporal dependencies among neighbor-trajectory users can help to better predict their trajectories [2]. In this direction, unlike our previously proposed mobility predictor (based on LSTM and CNN) designed for single agents [3], [4], [5], where agents were acting in isolation, we now propose the INteractive TRAnsformers ReinFORCEd (INTRAFORCE) social-aware neural network. We further employ a reinforcement learning agent to design the highest-performance transformers neural architecture based on the multi-modal trajectory scenario. Evaluations show that using the Orange dataset [4], our transformer-based predictor can remarkably increase the accuracy and decrease the training time and computations concerning our models based on LSTM and CNN [4]. Furthermore, on ETH+UCY datasets [6], INTRAFORCE achieves the least Mean Square Error compared to numerous state-of-the-art mechanisms on this popular dataset.

Item Type:

Other

Division/Institute:

08 Faculty of Science > Institute of Computer Science (INF) > Communication and Distributed Systems (CDS)
08 Faculty of Science > Institute of Computer Science (INF)

UniBE Contributor:

Emami, Negar, Braun, Torsten

Subjects:

000 Computer science, knowledge & systems
500 Science > 510 Mathematics
500 Science

Publisher:

Data Science Lab

Language:

English

Submitter:

Dimitrios Xenakis

Date Deposited:

03 May 2023 10:59

Last Modified:

03 May 2023 10:59

Related URLs:

Uncontrolled Keywords:

Trajectory Prediction; Transformers Neural Network; Reinforcement Learning; Social-aware Mobility Prediction

BORIS DOI:

10.48350/182254

URI:

https://boris.unibe.ch/id/eprint/182254

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