Safe Learning for Contact-Rich Robot Tasks: A Survey from Classical Learning-Based Methods to Safe Foundation Models
Heng Zhang, Rui Dai, Gokhan Solak, Pokuang Zhou, Yu She, and Arash Ajoudani

TL;DR
This survey reviews safe learning methods for contact-rich robotic tasks, emphasizing how emerging foundation models can enhance safety but also introduce new challenges for reliable deployment.
Contribution
It provides a comprehensive categorization of safe learning approaches and explores their integration with vision-language foundation models in contact-rich manipulation.
Findings
Safe exploration and execution techniques are reviewed and categorized.
Emerging foundation models offer new safety opportunities and challenges.
Future directions focus on reliable, safety-aligned robots in complex environments.
Abstract
Contact-rich tasks pose significant challenges for robotic systems due to inherent uncertainty, complex dynamics, and the high risk of damage during interaction. Recent advances in learning-based control have shown great potential in enabling robots to acquire and generalize complex manipulation skills in such environments, but ensuring safety, both during exploration and execution, remains a critical bottleneck for reliable real-world deployment. This survey provides a comprehensive overview of safe learning-based methods for robot contact-rich tasks. We categorize existing approaches into two main domains: safe exploration and safe execution. We review key techniques, including constrained reinforcement learning, risk-sensitive optimization, uncertainty-aware modeling, control barrier functions, and model predictive safety shields, and highlight how these methods incorporate prior…
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Taxonomy
TopicsRobot Manipulation and Learning · Reinforcement Learning in Robotics · Adversarial Robustness in Machine Learning
