ROLGJun 11, 2024

Conformalized Teleoperation: Confidently Mapping Human Inputs to High-Dimensional Robot Actions

arXiv:2406.07767v28 citations
AI Analysis

This work addresses uncertainty quantification for assistive robotics, enabling robots to proactively seek intervention, though it is incremental as it builds on existing data-driven mapping methods.

The paper tackles the problem of confidently mapping low-dimensional human inputs to high-dimensional robot actions in assistive teleoperation by adapting the mapping to estimate action quantiles and calibrating them with adaptive conformal prediction, resulting in detection of high uncertainty in tasks like 2D navigation and 7DOF grasping.

Assistive robotic arms often have more degrees-of-freedom than a human teleoperator can control with a low-dimensional input, like a joystick. To overcome this challenge, existing approaches use data-driven methods to learn a mapping from low-dimensional human inputs to high-dimensional robot actions. However, determining if such a black-box mapping can confidently infer a user's intended high-dimensional action from low-dimensional inputs remains an open problem. Our key idea is to adapt the assistive map at training time to additionally estimate high-dimensional action quantiles, and then calibrate these quantiles via rigorous uncertainty quantification methods. Specifically, we leverage adaptive conformal prediction which adjusts the intervals over time, reducing the uncertainty bounds when the mapping is performant and increasing the bounds when the mapping consistently mis-predicts. Furthermore, we propose an uncertainty-interval-based mechanism for detecting high-uncertainty user inputs and robot states. We evaluate the efficacy of our proposed approach in a 2D assistive navigation task and two 7DOF Kinova Jaco tasks involving assistive cup grasping and goal reaching. Our findings demonstrate that conformalized assistive teleoperation manages to detect (but not differentiate between) high uncertainty induced by diverse preferences and induced by low-precision trajectories in the mapping's training dataset. On the whole, we see this work as a key step towards enabling robots to quantify their own uncertainty and proactively seek intervention when needed.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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