Frozone: Freezing-Free, Pedestrian-Friendly Navigation in Human Crowds

We present Frozone, a novel algorithm to deal with the Freezing Robot Problem (FRP) that arises when a robot navigates through dense scenarios and crowds. Our method senses and explicitly predicts the trajectories of pedestrians and constructs a Potential Freezing Zone (PFZ); a spatial zone where the robot could freeze or be obtrusive to humans. Our formulation computes a deviation velocity to avoid the PFZ, which also accounts for social constraints. Furthermore, Frozone is designed for robots equipped with sensors with a limited sensing range and field of view. We ensure that the robot's deviation is bounded, thus avoiding sudden angular motion which could lead to the loss of perception data of the surrounding obstacles. We have combined Frozone with a Deep Reinforcement Learning-based (DRL) collision avoidance method and use our hybrid approach to handle crowds of varying densities. Our overall approach results in smooth and collision-free navigation in dense environments. We have evaluated our method's performance in simulation and on real differential drive robots in challenging indoor scenarios. We highlight the benefits of our approach over prior methods in terms of success rates (up to 50 pedestrian-friendliness (100 decrease) in challenging scenarios.

READ FULL TEXT

page 1

page 2

page 4

page 7

research
04/07/2020

CrowdSteer: Realtime Smooth and Collision-Free Robot Navigation in Dense Crowd Scenarios Trained using High-Fidelity Simulation

We present a novel high fidelity 3-D simulator that significantly reduce...
research
04/23/2020

OF-VO: Reliable Navigation among Pedestrians Using Commodity Sensors

We present a novel algorithm for safe navigation of a mobile robot among...
research
08/14/2020

COVID-Robot: Monitoring Social Distancing Constraints in Crowded Scenarios

Maintaining social distancing norms between humans has become an indispe...
research
02/07/2020

DenseCAvoid: Real-time Navigation in Dense Crowds using Anticipatory Behaviors

We present DenseCAvoid, a novel navigation algorithm for navigating a ro...
research
04/09/2018

AutoRVO: Local Navigation with Dynamic Constraints in Dense Heterogeneous Traffic

We present a novel algorithm for computing collision-free navigation for...
research
07/12/2019

NH-TTC: A gradient-based framework for generalized anticipatory collision avoidance

We propose NH-TTC, a general method for fast, anticipatory collision avo...
research
08/29/2021

Distributed Swarm Collision Avoidance Based on Angular Calculations

Collision avoidance is one of the most important topics in the robotics ...

Please sign up or login with your details

Forgot password? Click here to reset