An End-to-End Learning Approach for Trajectory Prediction in Pedestrian Zones

Ngo, Ha Q., Henke, Christoph, Hees, Frank

arXiv.org Artificial Intelligence 

This paper aims to explore the problem of trajectory prediction in heterogeneous pedestrian zones, where social dynamics representation is a big challenge. Proposed is an end-to-end learning framework for prediction accuracy improvement based on an attention mechanism to learn social interaction from multi-factor inputs.

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