TaPD: Temporal-adaptive Progressive Distillation for Observation-Adaptive Trajectory Forecasting in Autonomous Driving
Mingyu Fan, Yi Liu, Hao Zhou, Deheng Qian, Mohammad Haziq Khan, Matthias Raetsch

TL;DR
TaPD introduces a flexible, observation-adaptive trajectory forecasting framework for autonomous driving that effectively handles variable and extremely short historical data by combining progressive distillation and scene-aware backfilling.
Contribution
The paper proposes TaPD, a novel plug-and-play framework that improves trajectory prediction under variable history lengths using hierarchical knowledge distillation and scene-aware backfilling.
Findings
Outperforms baselines across all observation lengths.
Achieves significant improvements with very short inputs.
Enhances other predictors like HiVT in a plug-and-play manner.
Abstract
Trajectory prediction is essential for autonomous driving, enabling vehicles to anticipate the motion of surrounding agents to support safe planning. However, most existing predictors assume fixed-length histories and suffer substantial performance degradation when observations are variable or extremely short in real-world settings (e.g., due to occlusion or a limited sensing range). We propose TaPD (Temporal-adaptive Progressive Distillation), a unified plug-and-play framework for observation-adaptive trajectory forecasting under variable history lengths. TaPD comprises two cooperative modules: an Observation-Adaptive Forecaster (OAF) for future prediction and a Temporal Backfilling Module (TBM) for explicit reconstruction of the past. OAF is built on progressive knowledge distillation (PKD), which transfers motion pattern knowledge from long-horizon "teachers" to short-horizon…
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Taxonomy
TopicsAutonomous Vehicle Technology and Safety · Generative Adversarial Networks and Image Synthesis · Advanced Neural Network Applications
