SMEMO: Social Memory for Trajectory Forecasting
- URL: http://arxiv.org/abs/2203.12446v2
- Date: Sun, 18 Feb 2024 15:35:03 GMT
- Title: SMEMO: Social Memory for Trajectory Forecasting
- Authors: Francesco Marchetti, Federico Becattini, Lorenzo Seidenari, Alberto
Del Bimbo
- Abstract summary: We present a neural network based on an end-to-end trainable working memory, which acts as an external storage.
We show that our method is capable of learning explainable cause-effect relationships between motions of different agents, obtaining state-of-the-art results on trajectory forecasting datasets.
- Score: 34.542209630734234
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Effective modeling of human interactions is of utmost importance when
forecasting behaviors such as future trajectories. Each individual, with its
motion, influences surrounding agents since everyone obeys to social
non-written rules such as collision avoidance or group following. In this paper
we model such interactions, which constantly evolve through time, by looking at
the problem from an algorithmic point of view, i.e. as a data manipulation
task. We present a neural network based on an end-to-end trainable working
memory, which acts as an external storage where information about each agent
can be continuously written, updated and recalled. We show that our method is
capable of learning explainable cause-effect relationships between motions of
different agents, obtaining state-of-the-art results on multiple trajectory
forecasting datasets.
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