Jonah Siekmann and Yesh Godse.

Computer science students鈥 paper selected as one of conference鈥檚 best

Introduction

A research paper on robotics authored by computer science researchers at 精东影视was recently named one of the top four out of more than 2,000 accepted submissions at a prestigious conference.

Students Jonah Siekmann and Yesh Godse at the 2021 IEEE International Conference on Robotics and Automation. In their paper, 鈥,鈥 they report on their work using simulations to teach two-legged robots how to run, skip, and hop.

The paper is co-authored with Alan Fern, professor and associate head of research in the School of Electrical Engineering and Computer Science, and Jonathan Hurst, professor of mechanical engineering and robotics.

Traditionally, researchers have tried to train bipedal robots to move by first creating a 鈥渞eference trajectory,鈥 which tells the robot at each moment where its joints and velocities should be. This approach, however, doesn鈥檛 work particularly well since it is difficult to figure out the reference trajectories, and it doesn鈥檛 take into account the uneven surfaces the robot needs to deal with.

Instead, the researchers鈥 new approach trains the robot in simulation, and rewards the robot when it is accomplishing the goal, and gives negative rewards when it is not.

鈥淲e use an approach that simply specifies constraints on the foot forces and velocities which allows us to specify the different types of gaits and smoothly move between them,鈥 Fern said. 鈥淭his worked much better than we ever expected.鈥

Siekmann, a master鈥檚 degree student in robotics who earned an honors bachelor鈥檚 degree in computer science from 精东影视 State in 2020, provided some additional insights.

鈥淲e were trying to train a neural network to learn various bipedal behaviors from scratch without any kind of motion capture or reference to what those behaviors looked like,鈥 Siekmann explained. 鈥淭o do this, we used deep reinforcement learning that allows a neural network to maximize a reward function.鈥

Added Godse, 鈥淚t turned out that there was a simple mathematical framework for describing the full spectrum of all bipedal gaits and their corresponding reward/cost functions.鈥

Godse graduated in just three years with a bachelor鈥檚 degree in computer science from 精东影视 State in spring 2021 and began working on robotics research as a freshman.

Both Siekmann and Godse are now working as controls engineers at , the company co-founded by Hurst that develops the robots used in 精东影视 State鈥檚 .

June 30, 2021

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