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Socially-Aware Navigation Using Non-Linear Multi-Objective Optimization

Scott Forer, Santosh Balajee Banisetty, Logan Yliniemi, Monica Nicolescu, David Feil-Seifer

Year
2018
Citations
23

Abstract

For socially assistive robots (SAR)to be accepted into complex and stochastic human environments, it is important to account for subtle social norms. In this paper, we propose a novel approach to socially-aware navigation (SAN)which garnered an immense interest in the Human-Robot Interaction (HRI)community. We use a multi-objective optimization tool called the Pareto Concavity Elimination Transformation (PaC-cET)to capture the non-linear human navigation behavior, a novel contribution to the community. A candidate point on a trajectory is scored (1)for its progress towards the goal, and (2)based on autonomously-sensed distance-based features that capture the social norms and associated social costs. Rather than use a finely-tuned linear combination of these costs, we use PaCcET to select an optimized future trajectory point, associated with a non-linear combination of the costs. Existing research in this domain concentrates on geometric reasoning, model-based, and learning approaches, which have their own pros and cons. This approach is distinct from prior work in this area. We showed in a simulation that the PaCcET-based trajectory planner not only is able to avoid collisions and reach the intended destination in static and dynamic environments but also considers a human's personal space i.e. rules of proxemics in the trajectory selection process.

Keywords

ProxemicsTrajectoryComputer scienceRobotDomain (mathematical analysis)PlannerArtificial intelligencePoint (geometry)Trajectory optimizationPoint of interest

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