Human trajectory prediction involves forecasting future movements based on past positions and is crucial in various fields, including socially-aware robots, intelligent tracking systems, and autonomous vehicles. This work aims to learn representations from observed scenes and apply knowledge distillation to transfer insights from a teacher network to a student network. To achieve this, we integrate social and semantic maps, along with goal/waypoint heatmaps, into a multi-modal temporal backbone. Knowledge is transferred from a teacher network, which predicts short-termtrajectories based on long- term observations, to a student network, which predicts long-term trajectories from short-term data. We conducted extensive experiments with different lengths of teacher inputs and training data over longer time horizons, demonstrating that our model outperforms the state-of-the-art on the SDD and inD datasets in both short-term and long-term scenarios.
Bespoke Deep Learning Approaches for Pedestrian Trajectory Prediction
DAS, SOURAV
2025
Abstract
Human trajectory prediction involves forecasting future movements based on past positions and is crucial in various fields, including socially-aware robots, intelligent tracking systems, and autonomous vehicles. This work aims to learn representations from observed scenes and apply knowledge distillation to transfer insights from a teacher network to a student network. To achieve this, we integrate social and semantic maps, along with goal/waypoint heatmaps, into a multi-modal temporal backbone. Knowledge is transferred from a teacher network, which predicts short-termtrajectories based on long- term observations, to a student network, which predicts long-term trajectories from short-term data. We conducted extensive experiments with different lengths of teacher inputs and training data over longer time horizons, demonstrating that our model outperforms the state-of-the-art on the SDD and inD datasets in both short-term and long-term scenarios.File | Dimensione | Formato | |
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https://hdl.handle.net/20.500.14242/200541
URN:NBN:IT:UNIPD-200541