advertisement
Science News
from research organizations

How robots learn to hike

Date:
January 21, 2022
Source:
ETH Zurich
Summary:
Researchers have developed a new control approach that enables a legged robot, called ANYmal, to move quickly and robustly over difficult terrain. Thanks to machine learning, the robot can combine its visual perception of the environment with its sense of touch for the first time.
Share:
advertisement

FULL STORY

ETH Zurich researchers led by Marco Hutter have developed a new control approach that enables a legged robot, called ANYmal, to move quickly and robustly over difficult terrain. Thanks to machine learning, the robot can combine its visual perception of the environment with its sense of touch for the first time.

Steep sections on slippery ground, high steps, scree and forest trails full of roots: the path up the 1,098-metre-high Mount Etzel at the southern end of Lake Zurich is peppered with numerous obstacles. But ANYmal, the quadrupedal robot from the Robotic Systems Lab at ETH Zurich, overcomes the 120 vertical metres effortlessly in a 31-minute hike. That's 4 minutes faster than the estimated duration for human hikers -- and with no falls or missteps.

This is made possible by a new control technology, which researchers at ETH Zurich led by robotics professor Marco Hutter recently presented in the journalScience Robotics。"The robot has learned to combine visual perception of its environment with proprioception -- its sense of touch -- based on direct leg contact. This allows it to tackle rough terrain faster, more efficiently and, above all, more robustly," Hutter says. In the future, ANYmal can be used anywhere that is too dangerous for humans or too impassable for other robots.

Perceiving the environment accurately

导航困难地形,人类和动物quite automatically combine the visual perception of their environment with the proprioception of their legs and hands. This allows them to easily handle slippery or soft ground and move around with confidence, even when visibility is low. Until now, legged robots have been able to do this only to a limited extent.

"The reason is that the information about the immediate environment recorded by laser sensors and cameras is often incomplete and ambiguous," explains Takahiro Miki, a doctoral student in Hutter's group and lead author of the study. For example, tall grass, shallow puddles or snow appear as insurmountable obstacles or are partially invisible, even though the robot could actually traverse them. In addition, the robot's view can be obscured in the field by difficult lighting conditions, dust or fog.

“这就是为什么机器人像ANYmal能够decide for themselves when to trust the visual perception of their environment and move forward briskly, and when it is better to proceed cautiously and with small steps," Miki says. "And that's the big challenge."

A virtual training camp

Thanks to a new controller based on a neural network, the legged robot ANYmal, which was developed by ETH Zurich researchers and commercialized by the ETH spin-off ANYbotics, is now able to combine external and proprioceptive perception for the first time. Before the robot could put its capabilities to the test in the real world, the scientists exposed the system to numerous obstacles and sources of error in a virtual training camp. This let the network learn the ideal way for the robot to overcome obstacles, as well as when it can rely on environmental data -- and when it would do better to ignore that data.

"With this training, the robot is able to master the most difficult natural terrain without having seen it before," says ETH Zurich Professor Hutter. This works even if the sensor data on the immediate environment is ambiguous or vague. ANYmal then plays it safe and relies on its proprioception. According to Hutter, this allows the robot to combine the best of both worlds: the speed and efficiency of external sensing and the safety of proprioceptive sensing.

Use under extreme conditions

Whether after an earthquake, after a nuclear disaster, or during a forest fire, robots like ANYmal can be used primarily wherever it is too dangerous for humans and where other robots cannot cope with the difficult terrain.

Video:https://youtu.be/0e40Umfnl_w

advertisement

Story Source:

Materialsprovided byETH Zurich。Original written by Christoph Elhardt.Note: Content may be edited for style and length.


Journal Reference:

  1. Takahiro Miki, Joonho Lee, Jemin Hwangbo, Lorenz Wellhausen, Vladlen Koltun, Marco Hutter.Learning robust perceptive locomotion for quadrupedal robots in the wildScience Robotics, 2022; 7 (62) DOI:10.1126/scirobotics.abk2822

Cite This Page:

ETH Zurich. "How robots learn to hike." ScienceDaily. ScienceDaily, 21 January 2022. .
ETH Zurich. (2022, January 21). How robots learn to hike.ScienceDaily。检索2023年7月2日从www.koonmotors.com/releases/2022/01/220121124853.htm
ETH Zurich. "How robots learn to hike." ScienceDaily. www.koonmotors.com/releases/2022/01/220121124853.htm (accessed July 2, 2023).

Explore More
from ScienceDaily

RELATED STORIES

advertisement