Learning a Memory-Enhanced Multi-Stage Goal-Driven Network for Egocentric Trajectory Prediction
Xiuen Wu,
Sien Li,
Tao Wang
et al.
Abstract:We propose a memory-enhanced multi-stage goal-driven network (ME-MGNet) for egocentric trajectory prediction in dynamic scenes. Our key idea is to build a scene layout memory inspired by human perception in order to transfer knowledge from prior experiences to the current scenario in a top-down manner. Specifically, given a test scene, we first perform scene-level matching based on our scene layout memory to retrieve trajectories from visually similar scenes in the training data. This is followed by trajectory… Show more
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