Learning Latent Actions to Control Assistive Robots
Dylan P. Losey, Hong Jun Jeon, Mengxi Li, Krishnan Srinivasan, Ajay, Mandlekar, Animesh Garg, Jeannette Bohg, Dorsa Sadigh

TL;DR
This paper introduces a method for controlling assistive robots by learning low-dimensional latent actions from demonstrations, enabling more intuitive and personalized control for users, including those with disabilities.
Contribution
It proposes a novel approach to embed high-dimensional robot actions into low-dimensional latent spaces learned from offline demonstrations, improving user control and assistance.
Findings
Effective latent action models learned from demonstrations.
Improved user control in assistive tasks demonstrated.
Personalized joystick-to-action alignment enhances usability.
Abstract
Assistive robot arms enable people with disabilities to conduct everyday tasks on their own. These arms are dexterous and high-dimensional; however, the interfaces people must use to control their robots are low-dimensional. Consider teleoperating a 7-DoF robot arm with a 2-DoF joystick. The robot is helping you eat dinner, and currently you want to cut a piece of tofu. Today's robots assume a pre-defined mapping between joystick inputs and robot actions: in one mode the joystick controls the robot's motion in the x-y plane, in another mode the joystick controls the robot's z-yaw motion, and so on. But this mapping misses out on the task you are trying to perform! Ideally, one joystick axis should control how the robot stabs the tofu and the other axis should control different cutting motions. Our insight is that we can achieve intuitive, user-friendly control of assistive robots by…
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