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Generating Reliable and Efficient Predictions of Human Motion: A Promising Encounter between Physics and Neural Networks

Authors :
Antonucci, Alessandro
Papini, Gastone Pietro Rosati
Palopoli, Luigi
Fontanelli, Daniele
Publication Year :
2020

Abstract

Generating accurate and efficient predictions for the motion of the humans present in the scene is key to the development of effective motion planning algorithms for robots moving in promiscuous areas, where wrong planning decisions could generate safety hazard or simply make the presence of the robot "socially" unacceptable. Our approach to predict human motion is based on a neural network of a peculiar kind. Contrary to conventional deep neural networks, our network embeds in its structure the popular Social Force Model, a dynamic equation describing the motion in physical terms. This choice allows us to concentrate the learning phase in the aspects, which are really unknown (i.e., the model's parameters) and to keep the structure of the network simple and manageable. As a result, we are able to obtain a good prediction accuracy with a small synthetically generated training set, and the accuracy remains acceptable even when the network is applied in scenarios quite different from those for which it was trained. Finally, the choices of the network are "explainable", as they can be interpreted in physical terms. Comparative and experimental results prove the effectiveness of the proposed approach.<br />This paper was submitted to the 2020 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS) on the 03/01/2020, and is still under review

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....eff8d9f8e6f1ee5dad6c8ef7162cc5c8