ROAIHCFeb 27, 2025

Shared Autonomy for Proximal Teaching

arXiv:2502.19899v16 citationsh-index: 66HRI
Originality Incremental advance
AI Analysis

This work addresses the challenge of limited access to high-quality training for specialized tasks like racing, offering a method to enhance teaching through AI assistance, though it is incremental in leveraging existing shared autonomy frameworks.

The paper tackles the problem of personalized motor skill instruction by using shared autonomy to identify and target learnable sub-skills for students, resulting in improved driving performance, behavior, and smoothness in a simulated racing study with 50 participants.

Motor skill learning often requires experienced professionals who can provide personalized instruction. Unfortunately, the availability of high-quality training can be limited for specialized tasks, such as high performance racing. Several recent works have leveraged AI-assistance to improve instruction of tasks ranging from rehabilitation to surgical robot tele-operation. However, these works often make simplifying assumptions on the student learning process, and fail to model how a teacher's assistance interacts with different individuals' abilities when determining optimal teaching strategies. Inspired by the idea of scaffolding from educational psychology, we leverage shared autonomy, a framework for combining user inputs with robot autonomy, to aid with curriculum design. Our key insight is that the way a student's behavior improves in the presence of assistance from an autonomous agent can highlight which sub-skills might be most ``learnable'' for the student, or within their Zone of Proximal Development. We use this to design Z-COACH, a method for using shared autonomy to provide personalized instruction targeting interpretable task sub-skills. In a user study (n=50), where we teach high performance racing in a simulated environment of the Thunderhill Raceway Park with the CARLA Autonomous Driving simulator, we show that Z-COACH helps identify which skills each student should first practice, leading to an overall improvement in driving time, behavior, and smoothness. Our work shows that increasingly available semi-autonomous capabilities (e.g. in vehicles, robots) can not only assist human users, but also help *teach* them.

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