CVMay 21, 2019

Looking to Relations for Future Trajectory Forecast

arXiv:1905.08855v469 citations
AI Analysis

This work addresses trajectory forecasting for autonomous driving by improving relational modeling, though it appears incremental as it builds on existing frameworks.

The paper tackles the problem of predicting future trajectories of road users by inferring relational behavior from interactions, achieving state-of-the-art performance on public benchmark datasets.

Inferring relational behavior between road users as well as road users and their surrounding physical space is an important step toward effective modeling and prediction of navigation strategies adopted by participants in road scenes. To this end, we propose a relation-aware framework for future trajectory forecast. Our system aims to infer relational information from the interactions of road users with each other and with the environment. The first module involves visual encoding of spatio-temporal features, which captures human-human and human-space interactions over time. The following module explicitly constructs pair-wise relations from spatio-temporal interactions and identifies more descriptive relations that highly influence future motion of the target road user by considering its past trajectory. The resulting relational features are used to forecast future locations of the target, in the form of heatmaps with an additional guidance of spatial dependencies and consideration of the uncertainty. Extensive evaluations on the public benchmark datasets demonstrate the robustness and efficacy of the proposed framework as observed by performances higher than the state-of-the-art methods.

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