Project Details
Learning Human-like Trajectories for Whole-Body Motion with Artificial Force Fields (C03)
Subject Area
Automation, Mechatronics, Control Systems, Intelligent Technical Systems, Robotics
Term
from 2020 to 2024
Project identifier
Deutsche Forschungsgemeinschaft (DFG) - Project number 416228727
Presumably in hybrid societies, robots will only be accepted if their motions are predictable and human-like. Therefore, the project aims to optimize robot trajectories in terms of human-likeness. New methods will be developed for generating collision-free and functional trajectories by applying an end-to-end learned deep neural network, which uses depth maps. Deep neuronal networks are trained autonomously by traditional sampling-based motion planning methods. Moreover, a deep reinforcement learning approach adapts robot trajectories with artificial force fields such that they increase human-likeness. Several studies will be conducted to obtain a useful scale for human acceptance.
DFG Programme
Collaborative Research Centres
Applicant Institution
Technische Universität Chemnitz
Project Head
Professorin Dr.-Ing. Ulrike Thomas