Collaborative Trajectory Prediction via Late Fusion
Nadya Abdel Madjid, Murad Mebrahtu, Zakhar Yagudin, Bilal Hassan, Naoufel Werghi, Jorge Dias, Dzmitry Tsetserukou, Majid Khonji

TL;DR
This paper introduces a late-fusion framework for collaborative trajectory prediction in autonomous vehicles, reducing communication overhead and improving prediction accuracy by sharing forecasts rather than perception data.
Contribution
It shifts collaboration from perception to the prediction stage, creating a model-agnostic, asynchronous, and efficient framework for vehicle-to-vehicle trajectory sharing.
Findings
Late fusion reduces miss rate across datasets.
Collaborative prediction improves success rate by over 1% on real-world data.
Framework is effective with different models and datasets.
Abstract
Predicting future trajectories of surrounding traffic agents is critical for safe autonomous navigation and collision avoidance. Despite all advances in the trajectory forecasting realm, the prediction models remains vulnerable to uncertainty caused by occlusions, limited sensing range, and perception errors. Collaborative vehicle-to-vehicle (V2V) approaches help reduce this uncertainty by sharing complementary information. Existing collaborative trajectory prediction methods typically fuse feature maps at the perception stage to construct a holistic scene view. Further this holistic representation is decoded into the future trajectories. Such design incurs substantial communication overhead due to the exchange of high-dimensional feature representations and often assumes idealized bandwidth and synchronization, limiting practical deployment. We address these limitations by shifting…
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