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Self-Growing Spatial Graph Network for Context-Aware Pedestrian Trajectory Prediction

2020-12-11 13:25:58
Sirin Haddad, Siew-Kei Lam

Abstract

Pedestrian trajectory prediction is an active research area with recent works undertaken to embed accurate models of pedestrians social interactions and their contextual compliance into dynamic spatial graphs. However, existing works rely on spatial assumptions about the scene and dynamics, which entails a significant challenge to adapt the graph structure in unknown environments for an online system. %Additionally, tackling the same problem for streamed data entails the inherent challenge of adapting the graph structure to represent pedestrians interactions without reliance on spatial assumptions. In addition, there is a lack of assessment approach for the relational modeling impact on prediction performance. To fill this gap, we propose Social Trajectory Recommender-Gated Graph Recurrent Neighborhood Network, (STR-GGRNN), which uses data-driven adaptive online neighborhood recommendation based on the contextual scene features and pedestrian visual cues. The neighborhood recommendation is achieved by online Nonnegative Matrix Factorization (NMF) to construct the graph adjacency matrices for predicting the pedestrians' trajectories. %and evaluates the adjacency matrix against prediction errors. s Experiments based on widely-used datasets show that our method outperforms the state-of-the-art. Our best performing model achieves 12 cm ADE and $\sim$15 cm FDE on ETH-UCY dataset. The proposed method takes only 0.49 seconds when sampling a total of 20K future trajectories per frame.

Abstract (translated)

URL

https://arxiv.org/abs/2012.06320

PDF

https://arxiv.org/pdf/2012.06320.pdf


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