Action-Reaction: Forecasting the Dynamics of Human Interaction
Abstract
Forecasting human activities from visual evidence is an emerging area of research which aims to allow computational systems to make predictions about unseen human actions. We explore the task of activity forecasting in the context of dual-agent interactions to understand how the actions of one person can be used to predict the actions of another. We model dual-agent interactions as an optimal control problem, where the actions of the initiating agent induce a cost topology over the space of reactive poses - a space in which the reactive agent plans an optimal pose trajectory. The technique developed in this work employs a kernel-based reinforcement learning approximation of the soft maximum value function to deal with the high-dimensional nature of human motion and applies a mean-shift procedure over a continuous cost function to infer a smooth reaction sequence. Experimental results show that our proposed method is able to properly model human interactions in a high dimensional space of human poses. When compared to several baseline models, results show that our method is able to generate highly plausible simulations of human interaction.
BibTeX
@conference{Huang-2014-7935,author = {De-An Huang and Kris M. Kitani},
title = {Action-Reaction: Forecasting the Dynamics of Human Interaction},
booktitle = {Proceedings of (ECCV) European Conference on Computer Vision},
year = {2014},
month = {September},
pages = {489 - 504},
}