ROAIMar 24, 2024

Guessing human intentions to avoid dangerous situations in caregiving robots

arXiv:2403.16291v35 citationsh-index: 21Appl Sci
Originality Incremental advance
AI Analysis

This addresses safety concerns for vulnerable individuals in caregiving settings, though it is incremental as it builds on existing Artificial Theory of Mind approaches.

The paper tackles the problem of enabling caregiving robots to interpret human intentions and anticipate dangerous situations, proposing an algorithm that successfully detects and removes risks in real time with a high success rate.

For robots to interact socially, they must interpret human intentions and anticipate their potential outcomes accurately. This is particularly important for social robots designed for human care, which may face potentially dangerous situations for people, such as unseen obstacles in their way, that should be avoided. This paper explores the Artificial Theory of Mind (ATM) approach to inferring and interpreting human intentions. We propose an algorithm that detects risky situations for humans, selecting a robot action that removes the danger in real time. We use the simulation-based approach to ATM and adopt the 'like-me' policy to assign intentions and actions to people. Using this strategy, the robot can detect and act with a high rate of success under time-constrained situations. The algorithm has been implemented as part of an existing robotics cognitive architecture and tested in simulation scenarios. Three experiments have been conducted to test the implementation's robustness, precision and real-time response, including a simulated scenario, a human-in-the-loop hybrid configuration and a real-world scenario.

Foundations

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

Your Notes