Best News Network

A model that allows robots to follow and guide humans in crowded environments

A model that allows robots to follow and guide humans in crowded environments
The agent introduced by the researchers can solve human-following and -guiding tasks within crowded environments. Credit: Kästner et al.

Assistance robots are typically mobile robots designed to assist humans in malls, airports, health care facilities, home environments and various other settings. Among other things, these robots could help users to find their way around unknown environments, for instance guiding them to a specific location or sharing important information with them.

While the capabilities of assistance robots have improved significantly over the past decade, the systems that have so far been implemented in real-world environments are not yet capable of following or guiding humans efficiently within crowded spaces. In fact, training robots to track a specific user while navigating a dynamic environment characterized by many randomly moving “obstacles” is far from a simple task.

Researchers at the Berlin Institute of Technology have recently introduced a new model based on deep reinforcement learning that could allow mobile robots to guide a specific user to a desired location or follow him/her around while carrying their belongings, all within a crowded environment. This model, introduced in a paper pre-published on arXiv, could help to significantly enhance the capabilities of robots in malls, airports and other public places.

“The task of guiding or following a human in crowded environments, such as airports or train stations, to carry weight or goods is still an open problem,” Linh Kästner , Bassel Fatloun , Zhengcheng Shen , Daniel Gawrisch and Jens Lambrecht wrote in their paper. “In these use cases, the robot is not only required to intelligently interact with humans, but also to navigate safely among crowds.”

When they trained their model, the researchers also included semantic information about the states and behaviors of human users (e.g., talking, running, etc.). This allows their model to make decisions about how to best assist users, moving alongside them at a similar pace and without colliding with other humans or nearby obstacles.

“We propose a deep reinforcement learning based agent for human-guiding and -following tasks in crowded environments,” the researchers wrote in their paper. “Therefore, we incorporate semantic information to provide the agent with high-level information like the social states of humans, safety models, and class types.”

To test their model’s effectiveness, the researchers carried out a series of tests using arena-rosnav, a two-dimensional (2D) simulation environment for training and assessing deep learning models. The results of these tests were promising, as the artificial agent in the simulated scenarios could both guide humans to specific locations and follow them, adjusting its velocity to that of the user and avoiding nearby obstacles.

“We evaluate our proposed approach against a benchmark approach without semantic information and demonstrated enhanced navigational safety and robustness,” the researchers wrote in their paper. “Moreover, we demonstrate that the agent could learn to adapt its behavior to humans, which improves the human-robot interaction significantly.”

The deep reinforcement learning model developed by this team of researchers appeared to work well in simulations, so its performance will now need to be validated using physical robots in real-world environments. In the future, this work could pave the way toward the creation of more efficient robot assistants for airports, train stations, and other crowded public spaces.


A deep learning framework to estimate the pose of robotic arms and predict their movements


More information:
Linh Kästner, Bassel Fatloun, Zhengcheng Shen, Daniel Gawrisch, Jens Lambrecht, Human-following and -guiding in crowded environments using semantic deep reinforcement learning for mobile service robots. arXiv:2206.05771v1 [cs.RO], arxiv.org/abs/2206.05771

© 2022 Science X Network

Citation:
A model that allows robots to follow and guide humans in crowded environments (2022, July 1)
retrieved 1 July 2022
from https://techxplore.com/news/2022-06-robots-humans-crowded-environments.html

This document is subject to copyright. Apart from any fair dealing for the purpose of private study or research, no
part may be reproduced without the written permission. The content is provided for information purposes only.

Stay connected with us on social media platform for instant update click here to join our  Twitter, & Facebook

We are now on Telegram. Click here to join our channel (@TechiUpdate) and stay updated with the latest Technology headlines.

For all the latest Technology News Click Here 

 For the latest news and updates, follow us on Google News

Read original article here

Denial of responsibility! NewsAzi is an automatic aggregator around the global media. All the content are available free on Internet. We have just arranged it in one platform for educational purpose only. In each content, the hyperlink to the primary source is specified. All trademarks belong to their rightful owners, all materials to their authors. If you are the owner of the content and do not want us to publish your materials on our website, please contact us by email – [email protected]. The content will be deleted within 24 hours.