TrajPRed: Trajectory Prediction with Region-based Relation Learning

Forecasting human trajectories in traffic scenes is critical for safety within mixed or fully autonomous systems. Human future trajectories are driven by two major stimuli, social interactions, and stochastic goals. Thus, reliable forecasting needs to capture these two stimuli. Edge-based relation modeling represents social interactions using pairwise correlations from precise individual states. Nevertheless, edge-based relations can be vulnerable under perturbations. To alleviate these issues, we propose a region-based relation learning paradigm that models social interactions via region-wise dynamics of joint states, i.e., the changes in the density of crowds. In particular, region-wise agent joint information is encoded within convolutional feature grids. Social relations are modeled by relating the temporal changes of local joint information from a global perspective.

Data and Resources

Cite this as

C. Zhou, G. AlRegib, A. Parchami, K. Singh (2024). Dataset: TrajPRed: Trajectory Prediction with Region-based Relation Learning. https://doi.org/10.57702/7ayhre7r

DOI retrieved: December 3, 2024

Additional Info

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Created December 3, 2024
Last update December 3, 2024
Author C. Zhou
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G. AlRegib
A. Parchami
K. Singh
Homepage https://github.com/olivesgatech/TrajPRed