ITHACA, N.Y. – Cornell University researchers have developed a new robotic framework powered by artificial intelligence – called RHyME (Retrieval for Hybrid Imitation under Mismatched Execution) – that allows robots to learn tasks by watching a single how-to video.
Robots can be finicky learners. Historically, they've required precise, step-by-step directions to complete basic tasks and tend to call it quits when things go off-script, like after dropping a tool or losing a screw. RHyME, however, could fast-track the development and deployment of robotic systems by significantly reducing the time, energy and money needed to train them, the researchers said.
"One of the annoying things about working with robots is collecting so much data on the robot doing different tasks," said Kushal Kedia, a doctoral student in the field of computer science. "That's not how humans do tasks. We look at other people as inspiration."
Kedia will present the paper, " One-Shot Imitation under Mismatched Execution ," in May at the Institute of Electrical and Electronics Engineers' International Conference on Robotics and Automation, in Atlanta.
Home robot assistants are still a long way off because they lack the wits to navigate the physical world and its countless contingencies. To get robots up to speed, researchers like Kedia are training them with what amounts to how-to videos – human demonstrations of various tasks in a lab setting. The hope with this approach, a branch of machine learning called "imitation learning," is that robots will learn a sequence of tasks faster and be able to adapt to real-world environments.
"Our work is like translating French to English – we're translating any given task from human to robot," said senior author Sanjiban Choudhury , assistant professor of computer science.
This translation task still faces a broader challenge, however: Humans move too fluidly for a robot to track and mimic, and training robots with video requires gobs of it. Further, video demonstrations – of, say, picking up a napkin or stacking dinner plates – must be performed slowly and flawlessly, since any mismatch in actions between the video and the robot has historically spelled doom for robot learning, the researchers said.
"If a human moves in a way that's any different from how a robot moves, the method immediately falls apart," Choudhury said. "Our thinking was, 'Can we find a principled way to deal with this mismatch between how humans and robots do tasks?'"
RHyME is the team's answer – a scalable approach that makes robots less finicky and more adaptive. It supercharges a robotic system to use its own memory and connect the dots when performing tasks it has viewed only once by drawing on videos it has seen. For example, a RHyME-equipped robot shown a video of a human fetching a mug from the counter and placing it in a nearby sink will comb its bank of videos and draw inspiration from similar actions – like grasping a cup and lowering a utensil.
RHyME paves the way for robots to learn multiple-step sequences while significantly lowering the amount of robot data needed for training, the researchers said. RHyME requires just 30 minutes of robot data; in a lab setting, robots trained using the system achieved a more than 50% increase in task success compared to previous methods, the researchers said.